bitzhangcy / Deep-Learning-Based-Anomaly-Detection

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Deep-Learning-Based-Anomaly-Detection

Anomaly Detection: The process of detectingdata instances that significantly deviate from the majority of the whole dataset.

Contributed by Chunyang Zhang.

Content

1. Survey
2. Methodology
2.1 AutoEncoder 2.2 GAN
2.3 Flow 2.4 Diffusion Model
2.5 Transformer 2.6 Convolution
2.7 GNN 2.8 Time Series
2.9 Tabular 2.10 Out of Distribution
2.11 Large Model 2.12 Reinforcement Learning
2.13 Representation Learning 2.14 Nonparametric Approach
3. Mechanism
3.1 Dataset 3.2 Library
3.3 Analysis 3.4 Domain Adaptation
3.5 Loss Function 3.6 Model Selection
3.7 Knowledge Distillation 3.8 Data Augmentation
3.9 Outlier Exposure 3.10 Contrastive Learning
3.11 Continual Learning 3.12 Active Learning
3.13 Statistics 3.14 Density Estimation
3.15 Support Vector 3.16 Sparse Coding
3.17 Energy Model 3.18 Memory Bank
3.19 Cluster 3.20 Isolation
3.21 Multi Modal 3.22 Optimal Transport
3.23 Causal Inference 3.24 Gaussian Process
3.25 Multi Task 3.26 Interpretability
3.27 Neural Process 3.28 Online Learning
4. Application
4.1 Finance 4.2 Point Cloud
4.3 Autonomous Driving 4.4 Medical Image
4.5 Robotics 4.6 Cyber Intrusion
4.7 Diagnosis 4.8 High Performance Computing
4.9 Physics 4.10 Industry Process
4.11 Software 4.12 Astronomy

Survey

  1. A survey of single-scene video anomaly detection. TPAMI, 2022. paper

    Bharathkumar Ramachandra, Michael J. Jones, and Ranga Raju Vatsavai.

  2. Deep learning for anomaly detection: A review. ACM Computing Surveys, 2022. paper

    Guansong Pang, Chunhua Shen, Longbing Cao, and Anton Van Den Hengel.

  3. A unifying review of deep and shallow anomaly detection. Proceedings of the IEEE, 2020. paper

    Lukas Ruff, Jacob R. Kauffmann, Robert A. Vandermeulen, GrÉgoire Montavon, Wojciech Samek, Marius Kloft, Thomas G. Dietterich, and Klaus-robert MÜller.

  4. A review on outlier/anomaly detection in time series data. ACM Computing Surveys, 2022. paper

    Ane Blázquez-García, Angel Conde, Usue Mori, and Jose A. Lozano.

  5. Anomaly detection in autonomous driving: A survey. CVPR, 2022. paper

    Daniel Bogdoll, Maximilian Nitsche, and J. Marius Zöllner.

  6. A comprehensive survey on graph anomaly detection with deep learning. TKDE, 2021. paper

    Xiaoxiao Ma, Jia Wu, Shan Xue, Jian Yang, Chuan Zhou, Quan Z. Sheng, and Hui Xiong, and Leman Akoglu.

  7. Transformers in time series: A survey. arXiv, 2022. paper

    Qingsong Wen, Tian Zhou, Chaoli Zhang, Weiqi Chen, Ziqing Ma, Junchi Yan, and Liang Sun.

  8. A survey on explainable anomaly detection. arXiv, 2022. paper

    Zhong Li, Yuxuan Zhu, and Matthijs van Leeuwen.

  9. Deep learning approaches for anomaly-based intrusion detection systems: A survey, taxonomy, and open issues. KBS, 2020. paper

    Arwa Aldweesh, Abdelouahid Derhab, and Ahmed Z.Emam.

  10. Deep learning-based anomaly detection in cyber-physical systems: Progress and oportunities. ACM Computing Surveys, 2022. paper

    Yuan Luo, Ya Xiao, Long Cheng, Guojun Peng, and Danfeng (Daphne) Yao.

  11. GAN-based anomaly detection: A review. Neurocomputing, 2022. paper

    Xuan Xia, Xizhou Pan, Nan Lia, Xing He, Lin Ma, Xiaoguang Zhang, and Ning Ding.

  12. Unsupervised anomaly detection in time-series: An extensive evaluation and analysis of state-of-the-art methods. arXiv, 2022. paper

    Nesryne Mejri, Laura Lopez-Fuentes, Kankana Roy, Pavel Chernakov, Enjie Ghorbel, and Djamila Aouada.

  13. Deep learning for time series anomaly detection: A survey. arXiv, 2022. paper

    Zahra Zamanzadeh Darban, Geoffrey I. Webb, Shirui Pan, Charu C. Aggarwal, and Mahsa Salehi.

  14. A survey of deep learning-based network anomaly detection. Cluster Computing, 2019. paper

    Donghwoon Kwon, Hyunjoo Kim, Jinoh Kim, Sang C. Suh, Ikkyun Kim, and Kuinam J. Kim.

  15. Survey on anomaly detection using data mining techniques. Procedia Computer Science, 2015. paper

    Shikha Agrawal and Jitendra Agrawal.

  16. Graph based anomaly detection and description: A survey. Data Mining and Knowledge Discovery, 2015. paper

    Leman Akoglu, Hanghang Tong, and Danai Koutra.

  17. Domain anomaly detection in machine perception: A system architecture and taxonomy. TPAMI, 2014. paper

    Josef Kittler, William Christmas, Teófilo de Campos, David Windridge, Fei Yan, John Illingworth, and Magda Osman.

  18. Graph-based time-series anomaly detection: A Survey. arXiv, 2023. paper

    Thi Kieu Khanh Ho, Ali Karami, and Narges Armanfard.

  19. Weakly supervised anomaly detection: A survey. arXiv, 2023. paper

    Minqi Jiang, Chaochuan Hou, Ao Zheng, Xiyang Hu, Songqiao Han, Hailiang Huang, Xiangnan He, Philip S. Yu, and Yue Zhao.

  20. A comprehensive survey of deep transfer learning for anomaly detection in industrial time series: Methods, applications, and directions. arXiv, 2023. paper

    Peng Yan, Ahmed Abdulkadir, Matthias Rosenthal, Gerrit A. Schatte, Benjamin F. Grewe, and Thilo Stadelmann.

  21. Survey on video anomaly detection in dynamic scenes with moving cameras. arXiv, 2023. paper

    Runyu Jiao, Yi Wan, Fabio Poiesi, and Yiming Wang.

  22. Physics-informed machine learning for data anomaly detection, classification, localization, and mitigation: A review, challenges, and path forward. arXiv, 2023. paper

    Mehdi Jabbari Zideh, Paroma Chatterjee, and Anurag K. Srivastava.

  23. Detecting and learning out-of-distribution data in the open world: Algorithm and theory. Thesis, 2023. Ph.D.

    Yiyou Sun.

  24. Meta-survey on outlier and anomaly detection. arXiv, 2023. paper

    Madalina Olteanu, Fabrice Rossi, and Florian Yger.

Methodology

AutoEncoder

  1. Graph regularized autoencoder and its application in unsupervised anomaly detection. TPAMI, 2022. paper

    Imtiaz Ahmed, Travis Galoppo, Xia Hu, and Yu Ding.

  2. Innovations autoencoder and its application in one-class anomalous sequence detection. JMLR, 2022. paper

    Xinyi Wang and Lang Tong.

  3. Autoencoders-A comparative analysis in the realm of anomaly detection. CVPR, 2022. paper

    Sarah Schneider, Doris Antensteiner, Daniel Soukup, and Matthias Scheutz.

  4. Attention guided anomaly localization in images. ECCV, 2020. paper

    Shashanka Venkataramanan, Kuan-Chuan Peng, Rajat Vikram Singh, and Abhijit Mahalanobis.

  5. Latent space autoregression for novelty detection. CVPR, 2018. paper

    Davide Abati, Angelo Porrello, Simone Calderara, and Rita Cucchiara.

  6. Anomaly detection in time series with robust variational quasi-recurrent autoencoders. ICDM, 2018. paper

    Tung Kieu, Bin Yang, Chenjuan Guo, Razvan-Gabriel Cirstea, Yan Zhao, Yale Song, and Christian S. Jensen.

  7. Robust and explainable autoencoders for unsupervised time series outlier detection. ICDE, 2022. paper

    Tung Kieu, Bin Yang, Chenjuan Guo, Christian S. Jensen, Yan Zhao, Feiteng Huang, and Kai Zheng.

  8. Latent feature learning via autoencoder training for automatic classification configuration recommendation. KBS, 2022. paper

    Liping Deng and Mingqing Xiao.

  9. Deep autoencoding Gaussian mixture model for unsupervised anomaly detection. ICLR, 2018. paper

    Bo Zongy, Qi Songz, Martin Renqiang Miny, Wei Chengy, Cristian Lumezanuy, Daeki Choy, and Haifeng Chen.

  10. Anomaly detection with robust deep autoencoders. KDD, 2017. paper

    Chong Zhou and Randy C. Paffenroth.

  11. Unsupervised anomaly detection via variational auto-encoder for seasonal KPIs in web applications. WWW, 2018. paper

    Haowen Xu, Wenxiao Chen, Nengwen Zhao,Zeyan Li, Jiahao Bu, Zhihan Li, Ying Liu, Youjian Zhao, Dan Pei, Yang Feng, Jie Chen, Zhaogang Wang, and Honglin Qiao.

  12. Spatio-temporal autoencoder for video anomaly detection. MM, 2017. paper

    Yiru Zhao, Bing Deng, Chen Shen, Yao Liu, Hongtao Lu, and Xiansheng Hua.

  13. Learning discriminative reconstructions for unsupervised outlier removal. ICCV, 2015. paper

    Yan Xia, Xudong Cao, Fang Wen, Gang Hua, and Jian Sun.

  14. Outlier detection with autoencoder ensembles. ICDM, 2017. paper

    Jinghui Chen, Saket Sathey, Charu Aggarwaly, and Deepak Turaga.

  15. A study of deep convolutional auto-encoders for anomaly detection in videos. Pattern Recognition Letters, 2018. paper

    Manassés Ribeiro, AndréEugênio Lazzaretti, and Heitor Silvério Lopes.

  16. Classification-reconstruction learning for open-set recognition. CVPR, 2019. paper

    Ryota Yoshihashi, Shaodi You, Wen Shao, Makoto Iida, Rei Kawakami, and Takeshi Naemura.

  17. Making reconstruction-based method great again for video anomaly detection. ICDM, 2022. paper

    Yizhou Wang, Can Qin, Yue Bai, Yi Xu, Xu Ma, and Yun Fu.

  18. Two-stream decoder feature normality estimating network for industrial snomaly fetection. ICASSP, 2023. paper

    Chaewon Park, Minhyeok Lee, Suhwan Cho, Donghyeong Kim, and Sangyoun Lee.

  19. Synthetic pseudo anomalies for unsupervised video anomaly detection: A simple yet efficient framework based on masked autoencoder. ICASSP, 2023. paper

    Xiangyu Huang, Caidan Zhao, Chenxing Gao, Lvdong Chen, and Zhiqiang Wu.

  20. Deep autoencoding one-class time series anomaly detection. ICASSP, 2023. paper

    Xudong Mou, Rui Wang, Tiejun Wang, Jie Sun, Bo Li, Tianyu Wo, and Xudong Liu.

  21. Reconstruction error-based anomaly detection with few outlying examples. arXiv, 2023. paper

    Fabrizio Angiulli, Fabio Fassetti, and Luca Ferragina.

  22. LARA: A light and anti-overfitting retraining approach for unsupervised anomaly detection. arXiv, 2023. paper

    Feiyi Chen, Zhen Qing, Yingying Zhang, Shuiguang Deng, Yi Xiao, Guansong Pang, and Qingsong Wen.

  23. FMM-Head: Enhancing autoencoder-based ECG anomaly detection with prior knowledge. arXiv, 2023. paper

    Giacomo Verardo, Magnus Boman, Samuel Bruchfeld, Marco Chiesa, Sabine Koch, Gerald Q. Maguire Jr., and Dejan Kostic.

  24. Online multi-view anomaly detection with disentangled product-of-experts modeling. MM, 2023. paper

    Hao Wang, Zhiqi Cheng, Jingdong Sun, Xin Yang, Xiao Wu, Hongyang Chen, and Yan Yang.

  25. Fast particle-based anomaly detection algorithm with variational autoencoder. arXiv, 2023. paper

    Ryan Liu, Abhijith Gandrakota, Jennifer Ngadiuba, Maria Spiropulu, and Jean-Roch Vlimant.

  26. Dynamic erasing network based on multi-scale temporal features for weakly supervised video anomaly detection. arXiv, 2023. paper

    Chen Zhang, Guorong Li, Yuankai Qi, Hanhua Ye, Laiyun Qing, Ming-Hsuan Yang, and Qingming Huang.

  27. ACVAE: A novel self-adversarial variational auto-encoder combined with contrast learning for time series anomaly detection. Neural Networks, 2023. paper

    Xiaoxia Zhang, Shang Shi, HaiChao Sun, Degang Chen, Guoyin Wang, and Kesheng Wu.

GAN

  1. Stabilizing adversarially learned one-class novelty detection using pseudo anomalies. TIP, 2022. paper

    Muhammad Zaigham Zaheer, Jin-Ha Lee, Arif Mahmood, Marcella Astri, and Seung-Ik Lee.

  2. GAN ensemble for anomaly detection. AAAI, 2021. paper

    Han, Xu, Xiaohui Chen, and Liping Liu.

  3. Generative cooperative learning for unsupervised video anomaly detection. CVPR, 2022. paper

    Zaigham Zaheer, Arif Mahmood, M. Haris Khan, Mattia Segu, Fisher Yu, and Seung-Ik Lee.

  4. GAN-based anomaly detection in imbalance problems. ECCV, 2020. paper

    Junbong Kim, Kwanghee Jeong, Hyomin Choi, and Kisung Seo.

  5. Old is gold: Redefining the adversarially learned one-class classifier training paradigm. CVPR, 2020. paper

    Muhammad Zaigham Zaheer, Jin-ha Lee, Marcella Astrid, and Seung-Ik Lee.

  6. Unsupervised anomaly detection with generative adversarial networks to guide marker discovery. IPMI, 2017. paper

    Thomas Schlegl, Philipp Seeböck, Sebastian M. Waldstein, Ursula Schmidt-Erfurth, and Georg Langs.

  7. Adversarially learned anomaly detection. ICDM, 2018. paper

    Houssam Zenati, Manon Romain, Chuan-Sheng Foo, Bruno Lecouat, and Vijay Chandrasekhar.

  8. BeatGAN: Anomalous rhythm detection using adversarially generated time series. IJCAI, 2019. paper

    Bin Zhou, Shenghua Liu, Bryan Hooi, Xueqi Cheng, and Jing Ye.

  9. Convolutional transformer based dual discriminator generative adversarial networks for video anomaly detection. MM, 2021. paper

    Xinyang Feng, Dongjin Song, Yuncong Chen, Zhengzhang Chen, Jingchao Ni, and Haifeng Chen.

  10. USAD: Unsupervised anomaly detection on multivariate time series. KDD, 2020. paper

    Julien Audibert, Pietro Michiardi, Frédéric Guyard, Sébastien Marti, and Maria A. Zuluaga.

  11. Anomaly detection with generative adversarial networks for multivariate time series. ICLR, 2018. paper

    Dan Li, Dacheng Chen, Jonathan Goh, and See-kiong Ng.

  12. Efficient GAN-based anomaly detection. ICLR, 2018. paper

    Houssam Zenati, Chuan Sheng Foo, Bruno Lecouat, Gaurav Manek, and Vijay Ramaseshan Chandrasekhar.

  13. GANomaly: Semi-supervised anomaly detection via adversarial training. ACCV, 2019. paper

    Akcay, Samet, Amir Atapour-Abarghouei, and Toby P. Breckon.

  14. f-AnoGAN: Fast unsupervised anomaly detection with generative adversarial networks. Medical Image Analysis, 2019. paper

    Thomas Schlegl, Philipp Seeböck, Sebastian M. Waldstein, Georg Langs, and Ursula Schmidt-Erfurth.

  15. OCGAN: One-class novelty detection using GANs with constrained latent representations. CVPR, 2019. paper

    Pramuditha Perera, Ramesh Nallapati, and Bing Xiang.

  16. Adversarially learned one-class classifier for novelty detection. CVPR, 2018. paper

    Mohammad Sabokrou, Mohammad Khalooei, Mahmood Fathy, and Ehsan Adeli.

  17. Generative probabilistic novelty detection with adversarial autoencoders. NIPS, 2018. paper

    Stanislav Pidhorskyi, Ranya Almohsen, Donald A. Adjeroh, and Gianfranco Doretto.

  18. Image anomaly detection with generative adversarial networks. ECML PKDD, 2018. paper

    Lucas Deecke, Robert Vandermeulen, Lukas Ruff, Stephan Mandt, and Marius Kloft.

  19. RGI: Robust GAN-inversion for mask-free image inpainting and unsupervised pixel-wise anomaly detection. ICLR, 2023. paper

    Shancong Mou, Xiaoyi Gu, Meng Cao, Haoping Bai, Ping Huang, Jiulong Shan, and Jianjun Shi.

  20. Truncated affinity maximization: One-class homophily modeling for graph anomaly detection. arXiv, 2023. paper

    Qiao Hezhe and Pang Guansong.

Flow

  1. OneFlow: One-class flow for anomaly detection based on a minimal volume region. TPAMI, 2022. paper

    Lukasz Maziarka, Marek Smieja, Marcin Sendera, Lukasz Struski, Jacek Tabor, and Przemyslaw Spurek.

  2. Comprehensive regularization in a bi-directional predictive network for video anomaly detection. AAAI, 2022. paper

    Chengwei Chen, Yuan Xie, Shaohui Lin, Angela Yao, Guannan Jiang, Wei Zhang, Yanyun Qu, Ruizhi Qiao, Bo Ren, and Lizhuang Ma.

  3. Future frame prediction network for video anomaly detection. TPAMI, 2022. paper

    Weixin Luo, Wen Liu, Dongze Lian, and Shenghua Gao.

  4. Graph-augmented normalizing flows for anomaly detection of multiple time series. ICLR, 2022. paper

    Enyan Dai and Jie Chen.

  5. Cloze test helps: Effective video anomaly detection via learning to complete video events. MM, 2020. paper

    Guang Yu, Siqi Wang, Zhiping Cai, En Zhu, Chuanfu Xu, Jianping Yin, and Marius Kloft.

  6. A modular and unified framework for detecting and localizing video anomalies. WACV, 2022. paper

    Keval Doshi and Yasin Yilmaz.

  7. Video anomaly detection with compact feature sets for online performance. TIP, 2017. paper

    Roberto Leyva, Victor Sanchez, and Chang-Tsun Li.

  8. U-Flow: A U-shaped normalizing flow for anomaly detection with unsupervised threshold. arXiv, 2017. paper

    Matías Tailanian, Álvaro Pardo, and Pablo Musé.

  9. Bi-directional frame interpolation for unsupervised video anomaly detection. WACV, 2023. paper

    Hanqiu Deng, Zhaoxiang Zhang, Shihao Zou, and Xingyu Li.

  10. AE-FLOW: Autoencoders with normalizing flows for medical images anomaly detection. ICLR, 2023. paper

    Yuzhong Zhao, Qiaoqiao Ding, and Xiaoqun Zhang.

  11. A video anomaly detection framework based on appearance-motion semantics representation consistency. ICASSP, 2023. paper

    Xiangyu Huang, Caidan Zhao, and Zhiqiang Wu.

  12. Fully convolutional cross-scale-flows for image-based defect detection. WACV, 2022. paper

    Marco Rudolph, Tom Wehrbein, Bodo Rosenhahn, and Bastian Wandt.

  13. CFLOW-AD: Real-time unsupervised anomaly detection with localization via conditional normalizing flows. WACV, 2022. paper

    Denis Gudovskiy, Shun Ishizaka, and Kazuki Kozuka.

  14. Same same but DifferNet: Semi-supervised defect detection with normalizing flows. WACV, 2021. paper

    Marco Rudolph, Bastian Wandt, and Bodo Rosenhahn.

  15. Normalizing flow based feature synthesis for outlier-aware object detection. CVPR, 2023. paper

    Nishant Kumar, Siniša Šegvić, Abouzar Eslami, and Stefan Gumhold.

  16. DyAnNet: A scene dynamicity guided self-trained video anomaly detection network. WACV, 2023. paper

    Kamalakar Vijay Thakare, Yash Raghuwanshi, Debi Prosad Dogra, Heeseung Choi, and Ig-Jae Kim.

  17. Multi-scale spatial-temporal interaction network for video anomaly detection. arXiv, 2023. paper

    Zhiyuan Ning, Zhangxun Li, and Liang Song.

  18. MSFlow: Multi-scale flow-based framework for unsupervised anomaly detection. arXiv, 2023. paper

    Yixuan Zhou, Xing Xu, Jingkuan Song, Fumin Shen, and Hengtao Shen.

  19. PyramidFlow: High-resolution defect contrastive localization using pyramid normalizing flow. CVPR, 2023. paper

    Jiarui Lei, Xiaobo Hu, Yue Wang, and Dong Liu.

  20. Topology-matching normalizing flows for out-of-distribution detection in robot learning. CoRL, 2023. paper

    Jianxiang Feng, Jongseok Lee, Simon Geisler, Stephan Günnemann, and Rudolph Triebel.

  21. Video anomaly detection via spatio-temporal pseudo-anomaly generation : A unified approach. arXiv, 2023. paper

    Ayush K. Rai, Tarun Krishna, Feiyan Hu, Alexandru Drimbarean, Kevin McGuinness, Alan F. Smeaton, and Noel E. O'Connor.

Diffusion Model

  1. AnoDDPM: Anomaly detection with denoising diffusion probabilistic models using simplex noise. CVPR, 2022. paper

    Julian Wyatt, Adam Leach, Sebastian M. Schmon, and Chris G. Willcocks.

  2. Diffusion models for medical anomaly detection. MICCAI, 2022. paper

    Julia Wolleb, Florentin Bieder, Robin Sandkühler, and Philippe C. Cattin.

  3. DiffusionAD: Denoising diffusion for anomaly detection. arXiv, 2023. paper

    Hui Zhang, Zheng Wang, Zuxuan Wu, Yugang Jiang.

  4. Anomaly detection with conditioned denoising diffusion models. arXiv, 2023. paper

    Arian Mousakhan, Thomas Brox, and Jawad Tayyub.

  5. Unsupervised out-of-distribution detection with diffusion inpainting. ICML, 2023. paper

    Zhenzhen Liu, Jin Peng Zhou, Yufan Wang, and Kilian Q. Weinberger.

  6. On diffusion modeling for anomaly detection. arXiv, 2023. paper

    Victor Livernoche, Vineet Jain, Yashar Hezaveh, and Siamak Ravanbakhsh.

  7. Mask, stitch, and re-sample: Enhancing robustness and generalizability in anomaly detection through automatic diffusion models. arXiv, 2023. paper

    Cosmin I. Bercea, Michael Neumayr, Daniel Rueckert, and Julia A. Schnabel.

  8. Unsupervised anomaly detection in medical images using masked diffusion model. arXiv, 2023. paper

    Hasan Iqbal, Umar Khalid, Jing Hua, and Chen Chen.

  9. Unsupervised anomaly detection in medical images using masked diffusion model. arXiv, 2023. paper

    Hasan Iqbal, Umar Khalid, Jing Hua, and Chen Chen.

  10. ImDiffusion: Imputed diffusion models for multivariate time series anomaly detection. arXiv, 2023. paper

    Yuhang Chen, Chaoyun Zhang, Minghua Ma, Yudong Liu, Ruomeng Ding, Bowen Li, Shilin He, Saravan Rajmohan, Qingwei Lin, and Dongmei Zhang.

  11. Multimodal motion conditioned diffusion model for skeleton-based video anomaly detection. arXiv, 2023. paper

    Alessandro Flaborea, Luca Collorone, Guido Maria D’Amely di Melendugno, Stefano D’Arrigo, Bardh Prenkaj, and Fabio Galasso.

  12. LafitE: Latent diffusion model with feature editing for unsupervised multi-class anomaly detection. arXiv, 2023. paper

    Haonan Yin, Guanlong Jiao, Qianhui Wu, Borje F. Karlsson, Biqing Huang, and Chin Yew Lin.

  13. Diffusion models for counterfactual generation and anomaly detection in brain images. arXiv, 2023. paper

    Alessandro Fontanella, Grant Mair, Joanna Wardlaw, Emanuele Trucco, and Amos Storkey.

  14. Imputation-based time-series anomaly detection with conditional weight-incremental diffusion models. KDD, 2023. paper

    Chunjing Xiao, Zehua Gou, Wenxin Tai, Kunpeng Zhang, and Fan Zhou.

  15. MadSGM: Multivariate anomaly detection with score-based generative models. CIKM, 2023. paper

    Haksoo Lim, Sewon Park, Minjung Kim, Jaehoon Lee, Seonkyu Lim, and Noseong Park.

  16. Modality cycles with masked conditional diffusion for unsupervised anomaly segmentation in MRI. MICCAI, 2023. paper

    Ziyun Liang, Harry Anthony, Felix Wagner, and Konstantinos Kamnitsas.

  17. Controlled graph neural networks with denoising diffusion for anomaly detection. Expert Systems with Applications, 2023. paper

    Xuan Li, Chunjing Xiao, Ziliang Feng, Shikang Pang, Wenxin Tai, and Fan Zhou.

  18. **Unsupervised surface anomaly detection with diffusion probabilistic model.**ICCV, 2023. paper

    Matic Fučka, Vitjan Zavrtanik, and Danijel Skočaj.

  19. Transfusion -- A transparency-based diffusion model for anomaly detection. arXiv, 2023. paper

    Ziyun Liang, Harry Anthony, Felix Wagner, and Konstantinos Kamnitsas.

  20. Unsupervised anomaly detection using aggregated normative diffusion. arXiv, 2023. paper

    Alexander Frotscher, Jaivardhan Kapoor, Thomas Wolfers, and Christian F. Baumgartner.

  21. Adversarial denoising diffusion model for unsupervised anomaly detection. arXiv, 2023. paper

    Jongmin Yu, Hyeontaek Oh, and Jinhong Yang.

  22. Guided reconstruction with conditioned diffusion models for unsupervised anomaly detection in brain MRIs. arXiv, 2023. paper

    Finn Behrendt, Debayan Bhattacharya, Robin Mieling, Lennart Maack, Julia Krüger, Roland Opfer, and Alexander Schlaefer.

  23. DiAD: A diffusion-based framework for multi-class anomaly detection. arXiv, 2023. paper

    Haoyang He, Jiangning Zhang, Hongxu Chen, Xuhai Chen, Zhishan Li, Xu Chen, Yabiao Wang, Chengjie Wang, and Lei Xie.

  24. DATAELIXIR: Purifying poisoned dataset to mitigate backdoor attacks via diffusion models. AAAI, 2024. paper

    Jiachen Zhou, Peizhuo Lv, Yibing Lan, Guozhu Meng, Kai Chen, and Hualong Ma.

Transformer

  1. Video anomaly detection via prediction network with enhanced spatio-temporal memory exchange. ICASSP, 2022. paper

    Guodong Shen, Yuqi Ouyang, and Victor Sanchez.

  2. TranAD: Deep transformer networks for anomaly detection in multivariate time series data. VLDB, 2022. paper

    Shreshth Tuli, Giuliano Casale, and Nicholas R. Jennings.

  3. Pixel-level anomaly detection via uncertainty-aware prototypical transformer. MM, 2022. paper

    Chao Huang, Chengliang Liu, Zheng Zhang, Zhihao Wu, Jie Wen, Qiuping Jiang, and Yong Xu.

  4. AddGraph: Anomaly detection in dynamic graph using attention-based temporal GCN. IJCAI, 2019. paper

    Li Zheng, Zhenpeng Li, Jian Li, Zhao Li, and Jun Gao.

  5. Anomaly transformer: Time series anomaly detection with association discrepancy. ICLR, 2022. paper

    Jiehui Xu, Haixu Wu, Jianmin Wang, and Mingsheng Long.

  6. Constrained adaptive projection with pretrained features for anomaly detection. IJCAI, 2022. paper

    Xingtai Gui, Di Wu, Yang Chang, and Shicai Fan.

  7. Self-training multi-sequence learning with transformer for weakly supervised video anomaly detection. AAAI, 2022. paper

    Shuo Li, Fang Liu, and Licheng Jiao.

  8. Beyond outlier detection: Outlier interpretation by attention-guided triplet deviation network. WWW, 2021. paper

    Hongzuo Xu, Yijie Wang, Songlei Jian, Zhenyu Huang, Yongjun Wang, Ning Liu, and Fei Li.

  9. Framing algorithmic recourse for anomaly detection. KDD, 2022. paper

    Debanjan Datta, Feng Chen, and Naren Ramakrishnan.

  10. Inpainting transformer for anomaly detection. ICIAP, 2022. paper

    Jonathan Pirnay and Keng Chai.

  11. Self-supervised and interpretable anomaly detection using network transformers. arXiv, 2022. paper

    Daniel L. Marino, Chathurika S. Wickramasinghe, Craig Rieger, and Milos Manic.

  12. Anomaly detection in surveillance videos using transformer based attention model. arXiv, 2022. paper

    Kapil Deshpande, Narinder Singh Punn, Sanjay Kumar Sonbhadra, and Sonali Agarwal.

  13. Multi-contextual predictions with vision transformer for video anomaly detection. arXiv, 2022. paper

    Joo-Yeon Lee, Woo-Jeoung Nam, and Seong-Whan Lee.

  14. Transformer based models for unsupervised anomaly segmentation in brain MR images. arXiv, 2022. paper

    Ahmed Ghorbel, Ahmed Aldahdooh, Shadi Albarqouni, and Wassim Hamidouche.

  15. HaloAE: An HaloNet based local transformer auto-encoder for anomaly detection and localization. arXiv, 2022. paper

    E. Mathian, H. Liu, L. Fernandez-Cuesta, D. Samaras, M. Foll, and L. Chen.

  16. Generalizable industrial visual anomaly detection with self-induction vision transformer. arXiv, 2022. paper

    Haiming Yao and Xue Wang.

  17. VT-ADL: A vision transformer network for image anomaly detection and localization. ISIE, 2021. paper

    Pankaj Mishra, Riccardo Verk, Daniele Fornasier, Claudio Piciarelli, and Gian Luca Foresti.

  18. Video event restoration based on keyframes for video anomaly detection. CVPR, 2023. paper

    Zhiwei Yang, Jing Liu, Zhaoyang Wu, Peng Wu, and Xiaotao Liu.

  19. AnomalyBERT: Self-supervised Transformer for time series anomaly detection using data degradation scheme. ICLR, 2023. paper

    Yungi Jeong, Eunseok Yang, Jung Hyun Ryu, Imseong Park, and Myungjoo Kang.

  20. HAN-CAD: Hierarchical attention network for context anomaly detection in multivariate time series. WWW, 2023. paper

    Haicheng Tao, Jiawei Miao, Lin Zhao, Zhenyu Zhang, Shuming Feng, Shu Wang, and Jie Cao.

  21. DCdetector: Dual attention contrastive representation learning for time series anomaly detection. KDD, 2023. paper

    Yiyuan Yang, Chaoli Zhang, Tian Zhou, Qingsong Wen, and Liang Sun.

  22. SelFormaly: Towards task-agnostic unified anomaly detection. arXiv, 2023. paper

    Yujin Lee, Harin Lim, and Hyunsoo Yoon.

  23. MIM-OOD: Generative masked image modelling for out-of-distribution detection in medical images. MICCAI, 2023. paper

    Sergio Naval Marimont, Vasilis Siomos, and Giacomo Tarroni.

  24. Focus the discrepancy: Intra- and Inter-correlation learning for image anomaly detection. ICCV, 2023. paper

    Xincheng Yao, Ruoqi Li, Zefeng Qian, Yan Luo, and Chongyang Zhang.

  25. Sparse binary Transformers for multivariate time series modeling. KDD, 2023. paper

    Matt Gorbett, Hossein Shirazi, and Indrakshi Ray.

  26. ADFA: Attention-augmented differentiable top-k feature adaptation for unsupervised medical anomaly detection. arXiv, 2023. paper

    Yiming Huang, Guole Liu, Yaoru Luo, and Ge Yang.

  27. Mask2Anomaly: Mask Transformer for universal open-set segmentation. arXiv, 2023. paper

    Shyam Nandan Rai, Fabio Cermelli, Barbara Caputo, and Carlo Masone.

  28. Hierarchical vector quantized Transformer for multi-class unsupervised anomaly detection. NIPS, 2023. paper

    Ruiying Lu, YuJie Wu, Long Tian, Dongsheng Wang, Bo Chen, Xiyang Liu, and Ruimin Hu.

  29. Attention modules improve image-level anomaly detection for industrial inspection: A DifferNet case study. arXiv, 2023. paper

    Andre Luiz Vieira e Silva, Francisco Simoes, Danny Kowerko2 Tobias Schlosser, Felipe Battisti, and Veronica Teichrieb.

  30. Exploring plain ViT reconstruction for multi-class unsupervised anomaly detection. arXiv, 2023. paper

    Jiangning Zhang, Xuhai Chen, Yabiao Wang, Chengjie Wang, Yong Liu, Xiangtai Li, Ming-Hsuan Yang, and Dacheng Tao.

Convolution

  1. Self-supervised predictive convolutional attentive block for anomaly detection. CVPR, 2022. paper

    Nicolae-Catalin Ristea, Neelu Madan, Radu Tudor Ionescu, Kamal Nasrollahi, Fahad Shahbaz Khan, Thomas B. Moeslund, and Mubarak Shah.

  2. Catching both gray and black swans: Open-set supervised anomaly detection. CVPR, 2022. paper

    Choubo Ding, Guansong Pang, and Chunhua Shen.

  3. Learning memory-guided normality for anomaly detection. CVPR, 2020. paper

    Hyunjong Park, Jongyoun No, and Bumsub Ham.

  4. CutPaste: Self-supervised learning for anomaly detection and localization. CVPR, 2021. paper

    Chunliang Li, Kihyuk Sohn, Jinsung Yoon, and Tomas Pfister.

  5. Object-centric auto-encoders and dummy anomalies for abnormal event detection in video. CVPR, 2019. paper

    Radu Tudor Ionescu, Fahad Shahbaz Khan, Mariana-Iuliana Georgescu, and Ling Shao.

  6. Mantra-Net: Manipulation tracing network for detection and localization of image forgeries with anomalous features. CVPR, 2019. paper

    Yue Wu, Wael AbdAlmageed, and Premkumar Natarajan.

  7. Grad-CAM: Visual explanations from deep networks via gradient-based localization. ICCV, 2017. paper

    Ramprasaath R. Selvaraju, Michael Cogswell, Abhishek Das, Ramakrishna Vedantam, Devi Parikh, and Dhruv Batra.

  8. A deep neural network for unsupervised anomaly detection and diagnosis in multivariate time series data. AAAI, 2019. paper

    Chuxu Zhang, Dongjin Song, Yuncong Chen, Xinyang Feng, Cristian Lumezanu, Wei Cheng, Jingchao Ni, Bo Zong, Haifeng Chen, and Nitesh V. Chawla.

  9. Real-world anomaly detection in surveillance videos. CVPR, 2018. paper

    Waqas Sultani, Chen Chen, and Mubarak Shah.

  10. FastAno: Fast anomaly detection via spatio-temporal patch transformation. WACV, 2022. paper

    Chaewon Park, MyeongAh Cho, Minhyeok Lee, and Sangyoun Lee.

  11. Object class aware video anomaly detection through image translation. CRV, 2022. paper

    Mohammad Baradaran and Robert Bergevin.

  12. Anomaly detection in video sequence with appearance-motion correspondence. ICCV, 2019. paper

    Trong-Nguyen Nguyen and Jean Meunier.

  13. Joint detection and recounting of abnormal events by learning deep generic knowledge. ICCV, 2017. paper

    Ryota Hinami, Tao Mei, and Shin’ichi Satoh.

  14. Deep-cascade: Cascading 3D deep neural networks for fast anomaly detection and localization in crowded scenes. TIP, 2017. paper

    Mohammad Sabokrou, Mohsen Fayyaz, Mahmood Fathy, and Reinhard Klette.

  15. Towards interpretable video anomaly detection. WACV, 2023. paper

    Keval Doshi and Yasin Yilmaz.

  16. Lossy compression for robust unsupervised time-series anomaly detection. CVPR, 2023. paper

    Christopher P. Ley and Jorge F. Silva.

  17. Learning second order local anomaly for general face forgery detection. CVPR, 2022. paper

    Jianwei Fei, Yunshu Dai, Peipeng Yu, Tianrun Shen, Zhihua Xia, and Jian Weng.

GNN

  1. Graph convolutional label noise cleaner: Train a plug-and-play action classifier for anomaly detection. CVPR, 2019. paper

    Jiaxing Zhong, Nannan Li, Weijie Kong, Shan Liu, Thomas H. Li, and Ge Li.

  2. Towards open set video anomaly detection. ECCV, 2019. paper

    Yuansheng Zhu, Wentao Bao, and Qi Yu.

  3. Decoupling representation learning and classification for GNN-based anomaly detection. SIGIR, 2021. paper

    Yanling Wan,, Jing Zhang, Shasha Guo, Hongzhi Yin, Cuiping Li, and Hong Chen.

  4. Crowd-level abnormal behavior detection via multi-scale motion consistency learning. AAAI, 2023. paper

    Linbo Luo, Yuanjing Li, Haiyan Yin, Shangwei Xie, Ruimin Hu, and Wentong Cai.

  5. Rethinking graph neural networks for anomaly detection. ICML, 2022. paper

    Jianheng Tang, Jiajin Li, Ziqi Gao, and Jia Li.

  6. Cross-domain graph anomaly detection via anomaly-aware contrastive alignment. AAAI, 2023. paper

    Qizhou Wang, Guansong Pang, Mahsa Salehi, Wray Buntine, and Christopher Leckie.

  7. A causal inference look at unsupervised video anomaly detection. AAAI, 2022. paper

    Xiangru Lin, Yuyang Chen, Guanbin Li, and Yizhou Yu.

  8. NetWalk: A flexible deep embedding approach for anomaly detection in dynamic networks. KDD, 2018. paper

    Wenchao Yu, Wei Cheng, Charu C. Aggarwal, Kai Zhang, Haifeng Chen, and Wei Wang.

  9. LUNAR: Unifying local outlier detection methods via graph neural networks. AAAI, 2022. paper

    Adam Goodge, Bryan Hooi, See-Kiong Ng, and Wee Siong Ng.

  10. Series2Graph: Graph-based subsequence anomaly detection for time series. VLDB, 2022. paper

    Paul Boniol and Themis Palpanas.

  11. Graph embedded pose clustering for anomaly detection. CVPR, 2020. paper

    Amir Markovitz, Gilad Sharir, Itamar Friedman, Lihi Zelnik-Manor, and Shai Avidan.

  12. Fast memory-efficient anomaly detection in streaming heterogeneous graphs. KDD, 2016. paper

    Emaad Manzoor, Sadegh M. Milajerdi, and Leman Akoglu.

  13. Raising the bar in graph-level anomaly detection. IJCAI, 2022. paper

    Chen Qiu, Marius Kloft, Stephan Mandt, and Maja Rudolph.

  14. SpotLight: Detecting anomalies in streaming graphs. KDD, 2018. paper

    Dhivya Eswaran, Christos Faloutsos, Sudipto Guha, and Nina Mishra.

  15. Graph anomaly detection via multi-scale contrastive learning networks with augmented view. AAAI, 2023. paper

    Jingcan Duan, Siwei Wang, Pei Zhang, En Zhu, Jingtao Hu, Hu Jin, Yue Liu, and Zhibin Dong.

  16. Counterfactual graph learning for anomaly detection on attributed networks. TKDE, 2023. paper

    Chunjing Xiao, Xovee Xu, Yue Lei, Kunpeng Zhang, Siyuan Liu, and Fan Zhou.

  17. Deep variational graph convolutional recurrent network for multivariate time series anomaly detection. ICML, 2022. paper

    Wenchao Chen, Long Tian, Bo Chen, Liang Dai, Zhibin Duan, and Mingyuan Zhou.

  18. SAD: Semi-supervised anomaly detection on dynamic graphs. arXiv, 2023. paper

    Sheng Tian, Jihai Dong, Jintang Li, Wenlong Zhao, Xiaolong Xu, Baokun wang, Bowen Song, Changhua Meng, Tianyi Zhang, and Liang Chen.

  19. Improving generalizability of graph anomaly detection models via data augmentation. TKDE, 2023. paper

    Shuang Zhou, Xiao Huang, Ninghao Liu, Huachi Zhou, Fu-Lai Chung, and Long-Kai Huang.

  20. Anomaly detection in networks via score-based generative models. ICML, 2023. paper

    Dmitrii Gavrilev and Evgeny Burnaev.

  21. Generated graph detection. ICML, 2023. paper

    Yihan Ma, Zhikun Zhang, Ning Yu, Xinlei He, Michael Backes, Yun Shen, and Yang Zhang.

  22. Graph-level anomaly detection via hierarchical memory networks. arXiv, 2023. paper

    Chaoxi Niu, Guansong Pang, and Ling Chen.

  23. CSCLog: A component subsequence correlation-aware log anomaly detection method. arXiv, 2023. paper

    Ling Chen, Chaodu Song, Xu Wang, Dachao Fu, and Feifei Li.

  24. A survey on graph neural networks for time series: Forecasting, classification, imputation, and anomaly detection. arXiv, 2023. paper

    Ming Jin, Huan Yee Koh, Qingsong Wen, Daniele Zambon, Cesare Alippi, Geoffrey I. Webb, Irwin King, and Shirui Pan.

  25. Correlation-aware spatial-temporal graph learning for multivariate time-series anomaly detection. arXiv, 2023. paper

    Yu Zheng, Huan Yee Koh, Ming Jin, Lianhua Chi, Khoa T. Phan, Shirui Pan, Yi-Ping Phoebe Chen, and Wei Xiang.

  26. Graph anomaly detection at group level: A topology pattern enhanced unsupervised approach. arXiv, 2023. paper

    Xing Ai, Jialong Zhou, Yulin Zhu, Gaolei Li, Tomasz P. Michalak, Xiapu Luo, and Kai Zhou.

  27. HRGCN: Heterogeneous graph-level anomaly detection with hierarchical relation-augmented graph neural networks. arXiv, 2023. paper

    Jiaxi Li, Guansong Pang, Ling Chen, Mohammad-Reza and Namazi-Rad.

  28. Revisiting adversarial attacks on graph neural networks for graph classification. TKDE, 2023. paper

    Xin Wang, Heng Chang, Beini Xie, Tian Bian, Shiji Zhou, Daixin Wang, Zhiqiang Zhang, and Wenwu Zhu.

  29. Normality learning-based graph anomaly detection via multi-scale contrastive learning. MM, 2023. paper

    Jingcan Duan, Pei Zhang, Siwei Wang, Jingtao Hu, Hu Jin, Jiaxin Zhang, Haifang Zhou, and Haifang Zhou.

  30. GLAD: Content-aware dynamic graphs for log anomaly detection. arXiv, 2023. paper

    Yufei Li, Yanchi Liu, Haoyu Wang, Zhengzhang Chen, Wei Cheng, Yuncong Chen, Wenchao Yu, Haifeng Chen, and Cong Liu.

  31. ARISE: Graph anomaly detection on attributed networks via substructure awareness. TNNLS, 2023. paper

    Jingcan Duan, Bin Xiao, Siwei Wang, Haifang Zhou, and Xinwang Liu.

  32. Rayleigh quotient graph neural networks for graph-level anomaly detection. arXiv, 2023. paper

    Xiangyu Dong, Xingyi Zhang, and Sibo Wang.

  33. Self-discriminative modeling for anomalous graph detection. arXiv, 2023. paper

    Jinyu Cai, Yunhe Zhang, and Jicong Fan.

  34. CVTGAD: Simplified transformer with cross-view attention for unsupervised graph-level anomaly detection. ECML PKDD, 2023. paper

    Jindong Li, Qianli Xing, Qi Wang, and Yi Chang.

  35. PREM: A simple yet effective approach for node-level graph anomaly detection. ICDM, 2023. paper

    Junjun Pan, Yixin Liu, Yizhen Zheng, and Shirui Pan.

  36. THGNN: An embedding-based model for anomaly detection in dynamic heterogeneous social networks. CIKM, 2023. paper

    Yilin Li, Jiaqi Zhu, Congcong Zhang, Yi Yang, Jiawen Zhang, Ying Qiao, and Hongan Wang.

  37. Learning node abnormality with weak supervision. CIKM, 2023. paper

    Qinghai Zhou, Kaize Ding, Huan Liu, and Hanghang Tong.

  38. RustGraph: Robust anomaly detection in dynamic graphs by jointly learning structural-temporal dependency. TKDE, 2023. paper

    Jianhao Guo, Siliang Tang, Juncheng Li, Kaihang Pan, and Lingfei Wu.

  39. An efficient adaptive multi-kernel learning with safe screening rule for outlier detection. TKDE, 2023. paper

    Xinye Wang, Lei Duan, Chengxin He, Yuanyuan Chen, and Xindong Wu.

  40. Anomaly detection in continuous-time temporal provenance graphs. NIPS, 2023. paper

    Jakub Reha, Giulio Lovisotto, Michele Russo, Alessio Gravina, and Claas Grohnfeldt.

  41. Open-set graph anomaly detection via normal structure regularisation. arXiv, 2023. paper

    Qizhou Wang, Guansong Pang, Mahsa Salehi, Wray Buntine, and Christopher Leckie.

  42. ADAMM: Anomaly detection of attributed multi-graphs with metadata: A unified neural network approach. arXiv, 2023. paper

    Konstantinos Sotiropoulos, Lingxiao Zhao, Pierre Jinghong Liang, and Leman Akoglu.

  43. Deep joint adversarial learning for anomaly detection on attribute networks. Information Sciences, 2023. paper

    Haoyi Fan, Ruidong Wang, Xunhua Huang, Fengbin Zhang, Zuoyong Li, and Shimei Su.

  44. Few-shot message-enhanced contrastive learning for graph anomaly detection. arXiv, 2023. paper

    Fan Xu, Nan Wang, Xuezhi Wen, Meiqi Gao, Chaoqun Guo, and Xibin Zhao.

  45. OCGEC: One-class graph embedding classification for DNN backdoor detection. arXiv, 2023. paper

    Haoyu Jiang, Haiyang Yu, Nan Li, and Ping Yi.

  46. Reinforcement neighborhood selection for unsupervised graph anomaly detection. arXiv, 2023. paper

    Yuanchen Bei, Sheng Zhou, Qiaoyu Tan, Hao Xu, Hao Chen, Zhao Li, and Jiajun Bu.

  47. ADA-GAD: Anomaly-denoised autoencoders for graph anomaly detection. AAAI, 2024. paper

    Junwei He, Qianqian Xu, Yangbangyan Jiang, Zitai Wang, and Qingming Huang.

Time Series

  1. Variational LSTM enhanced anomaly detection for industrial big data. TII, 2021. paper

    Xiaokang Zhou, Yiyong Hu, Wei Liang, Jianhua Ma, and Qun Jin.

  2. Robust anomaly detection for multivariate time series through stochastic recurrent neural network. KDD, 2019. paper

    Ya Su, Youjian Zhao, Chenhao Niu, Rong Liu, Wei Sun, and Dan Pei.

  3. DeepLog: Anomaly detection and diagnosis from system logs through deep learning. CCS, 2017. paper

    Min Du, Feifei Li, Guineng Zheng, and Vivek Srikumar.

  4. Unsupervised anomaly detection with LSTM neural networks. TNNLS, 2019. paper

    Tolga Ergen and Suleyman Serdar Kozat.

  5. LogAnomaly: Unsupervised detection of sequential and quantitative anomalies in unstructured logs. IJCAI, 2019. paper

    Weibin Meng, Ying Liu, Yichen Zhu, Shenglin Zhang, Dan Pei, Yuqing Liu, Yihao Chen, Ruizhi Zhang, Shimin Tao, Pei Sun, and Rong Zhou.

  6. Outlier detection for time series with recurrent autoencoder ensembles. IJCAI, 2019. paper

    Tung Kieu, Bin Yang, Chenjuan Guo, and Christian S. Jensen.

  7. Learning regularity in skeleton trajectories for anomaly detection in videos. CVPR, 2019. paper

    Romero Morais, Vuong Le, Truyen Tran, Budhaditya Saha, Moussa Mansour, and Svetha Venkatesh.

  8. LSTM-based encoder-decoder for multi-sensor anomaly detection. arXiv, 2016. paper

    Pankaj Malhotra, Anusha Ramakrishnan, Gaurangi Anand, Lovekesh Vig, Puneet Agarwal, and Gautam Shroff.

  9. CrossFuN: Multi-view joint cross fusion network for time series anomaly detection. TIM, 2023. paper

    Yunfei Bai, Jing Wang, Xueer Zhang, Xiangtai Miao, and Youfang Linf.

  10. Unsupervised anomaly detection by densely contrastive learning for time series data. Neural Networks, 2023. paper

    Wei Zhu, Weijian Li, E. Ray Dorsey, and Jiebo Luo.

  11. Algorithmic recourse for anomaly detection in multivariate time series. arXiv, 2023. paper

    Xiao Han, Lu Zhang, Yongkai Wu, and Shuhan Yuan.

  12. Unravel anomalies: An end-to-end seasonal-trend decomposition approach for time series anomaly detection. arXiv, 2023. paper

    Zhenwei Zhang, Ruiqi Wang, Ran Ding, and Yuantao Gu.

  13. MAG: A novel approach for effective anomaly detection in spacecraft telemetry data. TII, 2023. paper

    Bing Yu, Yang Yu, Jiakai Xu, Gang Xiang, and Zhiming Yang.

  14. Duogat: Dual time-oriented graph attention networks for accurate, efficient and explainable anomaly detection on time-series. CIKM, 2023. paper

    Jongsoo Lee, Byeongtae Park, and Dong-Kyu Chae.

  15. An enhanced spatio-temporal constraints network for anomaly detection in multivariate time series. KBS, 2023. paper

    Di Ge, Zheng Dong, Yuhang Cheng, and Yanwen Wu.

  16. Asymmetric autoencoder with SVD regularization for multivariate time series anomaly detection. Neural Networks, 2023. paper

    Yueyue Yao, Jianghong Ma, Shanshan Feng, and Yunming Ye.

  17. Unraveling the anomaly in time series anomaly detection: A self-supervised tri-domain solution. arXiv, 2023. paper

    Yuting Sun, Guansong Pang, Guanhua Ye, Tong Chen, Xia Hu, and Hongzhi Yin.

  18. A filter-augmented auto-encoder with learnable normalization for robust multivariate time series anomaly detection. Neural Networks, 2023. paper

    Jiahao Yu, Xin Gao, Baofeng Li, Feng Zhai, Jiansheng Lu, Bing Xue, Shiyuan Fu, and Chun Xiao.

  19. MEMTO: Memory-guided Transformer for multivariate time series anomaly detection. arXiv, 2023. paper

    Junho Song, Keonwoo Kim, Jeonglyul Oh, and Sungzoon Cho.

  20. Entropy causal graphs for multivariate time series anomaly detection. arXiv, 2023. paper

    Falih Gozi Febrinanto, Kristen Moore, Chandra Thapa, Mujie Liu, Vidya Saikrishna, Jiangang Ma, and Feng Xia.

Tabular

  1. Beyond individual input for deep anomaly detection on tabular data. arXiv, 2023. paper

    Hugo Thimonier, Fabrice Popineau, Arpad Rimmel, and Bich-Liên Doan.

  2. Fascinating supervisory signals and where to find them: Deep anomaly detection with scale learning. ICML, 2023. paper

    Hongzuo Xu, Yijie Wang, Juhui Wei, Songlei Jian, Yizhou Li, and Ning Liu.

  3. TabADM: Unsupervised tabular anomaly detection with diffusion models. arXiv, 2023. paper

    Guy Zamberg, Moshe Salhov, Ofir Lindenbaum, and Amir Averbuch.

  4. ATDAD: One-class adversarial learning for tabular data anomaly detection. Computers & Security, 2023. paper

    Xiaohui Yang and Xiang Li.

  5. Understanding the limitations of self-supervised learning for tabular anomaly detection. arXiv, 2023. paper

    Kimberly T. Mai, Toby Davies, and Lewis D. Griffin.

  6. Unmasking the chameleons: A benchmark for out-of-distribution detection in medical tabular data. arXiv, 2023. paper

    Mohammad Azizmalayeri, Ameen Abu-Hanna, and Giovanni Ciná.

  7. TDeLTA: A light-weight and robust table detection method based on learning text arrangement. AAAI, 2024. paper

    Yang Fan, Xiangping Wu, Qingcai Chen, Heng Li, Yan Huang, Zhixiang Cai, and Qitian Wu.

  8. How to overcome curse-of-dimensionality for out-of-distribution detection? AAAI, 2024. paper

    Soumya Suvra Ghosal, Yiyou Sun, and Yixuan Li.

Out of Distribution

  1. Your out-of-distribution detection method is not robust! NIPS, 2022. paper

    Mohammad Azizmalayeri, Arshia Soltani Moakhar, Arman Zarei, Reihaneh Zohrabi, Mohammad Taghi Manzuri, and Mohammad Hossein Rohban.

  2. Exploiting mixed unlabeled data for detecting samples of seen and unseen out-of-distribution classes. AAAI, 2022. paper

    Yixuan Sun and Wei Wang.

  3. Detect, distill and update: Learned DB systems facing out of distribution data. SIGMOD, 2023. paper

    Meghdad Kurmanji and Peter Triantafillou.

  4. Beyond mahalanobis distance for textual OOD detection. NIPS, 2022. paper

    Pierre Colombo, Eduardo Dadalto Câmara Gomes, Guillaume Staerman, Nathan Noiry, and Pablo Piantanida.

  5. Exploring the limits of out-of-distribution detection. NIPS, 2021. paper

    Stanislav Fort, Jie Ren, and Balaji Lakshminarayanan.

  6. Is out-of-distribution detection learnable? ICLR, 2022. paper

    Zhen Fang, Yixuan Li, Jie Lu, Jiahua Dong, Bo Han, and Feng Liu.

  7. Out-of-distribution detection is not all you need. AAAI, 2023. paper

    Joris Guerin, Kevin Delmas, Raul Sena Ferreira, and Jérémie Guiochet.

  8. iDECODe: In-distribution equivariance for conformal out-of-distribution detection. AAAI, 2022. paper

    Ramneet Kaur, Susmit Jha, Anirban Roy, Sangdon Park, Edgar Dobriban, Oleg Sokolsky, and Insup Lee.

  9. Out-of-distribution detection using an ensemble of self supervised leave-out classifiers. ECCV, 2018. paper

    Apoorv Vyas, Nataraj Jammalamadaka, Xia Zhu, Dipankar Das, Bharat Kaul, and Theodore L. Willke.

  10. Self-supervised learning for generalizable out-of-distribution detection. AAAI, 2020. paper

    Sina Mohseni, Mandar Pitale, JBS Yadawa, and Zhangyang Wang.

  11. Augmenting softmax information for selective classification with out-of-distribution data. ACCV, 2022. paper

    Guoxuan Xia and Christos-Savvas Bouganis.

  12. Robustness to spurious correlations improves semantic out-of-distribution detection. AAAI, 2023. paper

    Lily H. Zhang and Rajesh Ranganath.

  13. Out-of-distribution detection with implicit outlier transformation. ICLR, 2023. paper

    Qizhou Wang, Junjie Ye, Feng Liu, Quanyu Dai, Marcus Kalander, Tongliang Liu, Jianye Hao, and Bo Han.

  14. Out-of-distribution representation learning for time series classification. ICLR, 2023. paper

    Wang Lu, Jindong Wang, Xinwei Sun, Yiqiang Chen, and Xing Xie.

  15. Out-of-distribution detection based on in-distribution data patterns memorization with modern Hopfield energy. ICLR, 2023. paper

    Jinsong Zhang, Qiang Fu, Xu Chen, Lun Du, Zelin Li, Gang Wang, xiaoguang Liu, Shi Han, and Dongmei Zhang.

  16. Diversify and disambiguate: Out-of-distribution robustness via disagreement. ICLR, 2023. paper

    Yoonho Lee, Huaxiu Yao, and Chelsea Finn.

  17. Rethinking out-of-distribution (OOD) detection: Masked image nodeling is all you need. CVPR, 2023. paper

    Jingyao Li, Pengguang Chen, Shaozuo Yu, Zexin He, Shu Liu, and Jiaya Jia.

  18. LINe: Out-of-distribution detection by leveraging important neurons. CVPR, 2023. paper

    Yong Hyun Ahn, Gyeong-Moon Park, and Seong Tae Kim.

  19. Block selection method for using feature norm in out-of-distribution detection. CVPR, 2023. paper

    Yeonguk Yu, Sungho Shin, Seongju Lee, Changhyun Jun, and Kyoobin Lee.

  20. Devil is in the queries: Advancing mask transformers for real-world medical image segmentation and out-of-distribution localization. CVPR, 2023. paper

    Mingze Yuan, Yingda Xia, Hexin Dong, Zifan Chen, Jiawen Yao, Mingyan Qiu, Ke Yan, Xiaoli Yin, Yu Shi, Xin Chen, Zaiyi Liu, Bin Dong, Jingren Zhou, Le Lu, Ling Zhang, and Li Zhang.

  21. Unleashing mask: Explore the intrinsic out-of-distribution detection capability. ICML, 2023. paper

    Jianing Zhu, Hengzhuang Li, Jiangchao Yao, Tongliang Liu, Jianliang Xu, and Bo Han.

  22. DOS: Diverse outlier sampling for out-of-distribution detection. arXiv, 2023. paper

    Wenyu Jiang, Hao Cheng, Mingcai Chen, Chongjun Wang, and Hongxin Wei.

  23. POEM: Out-of-distribution detection with posterior sampling. ICML, 2022. paper

    Yifei Ming, Ying Fan, and Yixuan Li.

  24. Balanced energy regularization loss for out-of-distribution detection. CVPR, 2023. paper

    Hyunjun Choi, Hawook Jeong, and Jin Young Choi.

  25. A cosine similarity-based method for out-of-distribution detection. ICML, 2023. paper

    Nguyen Ngoc-Hieu, Nguyen Hung-Quang, The-Anh Ta, Thanh Nguyen-Tang, Khoa D Doan, and Hoang Thanh-Tung.

  26. Beyond AUROC & co. for evaluating out-of-distribution detection performance. CVPR, 2023. paper

    Galadrielle Humblot-Renaux, Sergio Escalera, and Thomas B. Moeslund.

  27. Feed two birds with one scone: Exploiting wild data for both out-of-distribution generalization and detection. ICML, 2023. paper

    Haoyue Bai, Gregory Canal, Xuefeng Du, Jeongyeol Kwon, Robert Nowak, and Yixuan Li.

  28. Key feature replacement of in-distribution samples for out-of-distribution detection. AAAI, 2023. paper

    Jaeyoung Kim, Seo Taek Kong, Dongbin Na, and Kyu-Hwan Jung.

  29. Heatmap-based out-of-distribution detection. AAAI, 2023. paper

    Julia Hornauer and Vasileios Belagiannis.

  30. RankFeat: Rank-1 feature removal for out-of-distribution detection. NIPS, 2022. paper

    Yue Song, Nicu Sebe, and Wei Wang.

  31. Delving into out-of-distribution detection with vision-language representations. NIPS, 2022. paper

    Yifei Ming, Ziyang Cai, Jiuxiang Gu, Yiyou Sun, Wei Li, and Yixuan Li.

  32. Detecting out-of-distribution data through in-distribution class prior. ICML, 2023. paper

    Xue Jiang, Feng Liu, Zhen Fang, Hong Chen, Tongliang Liu, Feng Zheng, and Bo Han.

  33. Out-of-distribution detection for monocular depth estimation. ICCV, 2023. paper

    Julia Hornauer, Adrian Holzbock, and Vasileios Belagiannis.

  34. Expecting the unexpected: Towards broad out-of-distribution detection. arXiv, 2023. paper

    Charles Guille-Escuret, Pierre-André Noël, Ioannis Mitliagkas, David Vazquez, and Joao Monteiro.

  35. ATTA: Anomaly-aware test-time adaptation for out-of-distribution detection in segmentation. arXiv, 2023. paper

    Zhitong Gao, Shipeng Yan, and Xuming He.

  36. Meta OOD learning for continuously adaptive OOD detection. ICCV, 2023. paper

    Xinheng Wu, Jie Lu, Zhen Fang, and Guangquan Zhang.

  37. Nearest neighbor guidance for out-of-distribution detection. ICCV, 2023. paper

    Jaewoo Park, Yoon Gyo Jung, and Andrew Beng Jin Teoh.

  38. Can pre-trained networks detect familiar out-of-distribution data? arXiv, 2023. paper

    Atsuyuki Miyai, Qing Yu, Go Irie, and Kiyoharu Aizawa.

  39. Understanding the feature norm for out-of-distribution detection. ICCV, 2023. paper

    Jaewoo Park, Jacky Chen Long Chai, Jaeho Yoon, and Andrew Beng Jin Teoh.

  40. Detecting out-of-distribution through the lens of neural collapse. arXiv, 2023. paper

    Litian Liu and Yao Qin.

  41. Learning to augment distributions for out-of-distribution detection. NIPS, 2023. paper

    Qizhou Wang, Zhen Fang, Yonggang Zhang, Feng Liu, Yixuan Li, and Bo Han.

  42. Incremental object-based novelty detection with feedback loop. arXiv, 2023. paper

    Simone Caldarella, Elisa Ricci, and Rahaf Aljundi.

  43. Out-of-distribution knowledge distillation via confidence amendment. arXiv, 2023. paper

    Zhilin Zhao, Longbing Cao, and Yixuan Zhang.

  44. Fast trainable projection for robust fine-tuning. NIPS, 2023. paper

    Junjiao Tian, Yencheng Liu, James Seale Smith, and Zsolt Kira.

  45. Trainable projected gradient method for robust fine-tuning. CVPR, 2023. paper

    Junjiao Tian, Xiaoliang Dai, Chih-Yao Ma, Zecheng He, Yen-Cheng Liu, and Zsolt Kira.

  46. GAIA: Delving into gradient-based attribution abnormality for out-of-distribution detection. NIPS, 2023. paper

    Jinggang Chen, Junjie Li, Xiaoyang Qu, Jianzong Wang, Jiguang Wan, and Jing Xiao.

  47. Domain aligned CLIP for few-shot classification. WACV, 2024. paper

    Muhammad Waleed Gondal, Jochen Gast, Inigo Alonso Ruiz, Richard Droste, Tommaso Macri, Suren Kumar, and Luitpold Staudigl.

  48. Towards few-shot out-of-distribution detection. arXiv, 2023. paper

    Jiuqing Dong, Yongbin Gao, Heng Zhou, Jun Cen, Yifan Yao, Sook Yoon, and Park Dong Sun.

  49. RankFeat&RankWeight: Rank-1 feature/weight removal for out-of-distribution detection. arXiv, 2023. paper

    Yue Song, Nicu Sebe, and Wei Wang.

  50. ID-like prompt learning for few-shot out-of-distribution detection. arXiv, 2023. paper

    Yichen Bai, Zongbo Han, Changqing Zhang, Bing Cao, Xiaoheng Jiang, and Qinghua Hu.

  51. Segment every out-of-distribution object. arXiv, 2023. paper

    Wenjie Zhao, Jia Li, Xin Dong, Yu Xiang, and Yunhui Guo.

  52. Raising the Bar of AI-generated image detection with CLIP. arXiv, 2023. paper

    Davide Cozzolino, Giovanni Poggi, Riccardo Corvi, Matthias Nießner, and Luisa Verdoliva.

  53. Likelihood-aware semantic alignment for full-spectrum out-of-distribution detection. arXiv, 2023. paper

    Fan Lu, Kai Zhu, Kecheng Zheng, Wei Zhai, and Yang Cao.

  54. How low can you go? Surfacing prototypical in-distribution samples for unsupervised anomaly detection. arXiv, 2023. paper

    Felix Meissen, Johannes Getzner, Alexander Ziller, Georgios Kaissis, and Daniel Rueckert.

  55. EAT: Towards long-tailed out-of-distribution detection. AAAI, 2024. paper

    Tong Wei, Bolin Wang, and Minling Zhang.

  56. GROOD: GRadient-aware out-Of-distribution detection in interpolated manifolds. arXiv, 2023. paper

    Mostafa ElAraby, Sabyasachi Sahoo, Yann Pequignot, Paul Novello, and Liam Paull.

  57. Out-of-distribution detection in long-tailed recognition with calibrated outlier class learning. AAAI, 2024. paper

    Wenjun Miao, Guansong Pang, Tianqi Li, Xiao Bai, and Jin Zheng.

Large Model

  1. WinCLIP: Zero-/few-shot anomaly classification and segmentation. CVPR, 2023. paper

    Jongheon Jeong, Yang Zou, Taewan Kim, Dongqing Zhang, Avinash Ravichandran, and Onkar Dabeer.

  2. Semantic anomaly detection with large language models. arXiv, 2023. paper

    Amine Elhafsi, Rohan Sinha, Christopher Agia, Edward Schmerling, Issa Nesnas, and Marco Pavone.

  3. AnomalyGPT: Detecting industrial anomalies using large vision-language models. arXiv, 2023. paper

    Zhaopeng Gu, Bingke Zhu, Guibo Zhu, Yingying Chen, Ming Tang, and Jinqiao Wang.

  4. AnoVL: Adapting vision-language models for unified zero-shot anomaly localization. arXiv, 2023. paper

    Hanqiu Deng, Zhaoxiang Zhang, Jinan Bao, and Xingyu Li.

  5. LogGPT: Exploring ChatGPT for log-based anomaly detection. arXiv, 2023. paper

    Jiaxing Qi, Shaohan Huang, Zhongzhi Luan, Carol Fung, Hailong Yang, and Depei Qian.

  6. CLIPN for zero-shot OOD detection: Teaching CLIP to say no. ICCV, 2023. paper

    Hualiang Wang, Yi Li, Huifeng Yao, and Xiaomeng Li.

  7. LogGPT: Log anomaly detection via GPT. arXiv, 2023. paper

    Xiao Han, Shuhan Yuan, and Mohamed Trabelsi.

  8. Semantic scene difference detection in daily life patroling by mobile robots using pre-trained large-scale vision-language model. IROS, 2023. paper

    Yoshiki Obinata, Kento Kawaharazuka, Naoaki Kanazawa, Naoya Yamaguchi, Naoto Tsukamoto, Iori Yanokura, Shingo Kitagawa, Koki Shinjo, Kei Okada, and Masayuki Inaba.

  9. HuntGPT: Integrating machine learning-based anomaly detection and explainable AI with large language models (LLMs). arXiv, 2023. paper

    Tarek Ali and Panos Kostakos.

  10. Graph neural architecture search with GPT-4. arXiv, 2023. paper

    Haishuai Wang, Yang Gao, Xin Zheng, Peng Zhang, Hongyang Chen, and Jiajun Bu.

  11. Exploring large language models for multi-modal out-of-distribution detection. EMNLP, 2023. paper

    Yi Dai, Hao Lang, Kaisheng Zeng, Fei Huang, and Yongbin Li.

  12. Detecting pretraining data from large language models. arXiv, 2023. paper

    Weijia Shi, Anirudh Ajith, Mengzhou Xia, Yangsibo Huang, Daogao Liu, Terra Blevins, Danqi Chen, and Luke Zettlemoyer.

  13. AnomalyCLIP: Object-agnostic prompt learning for zero-shot anomaly detection. arXiv, 2023. paper

    Qihang Zhou, Guansong Pang, Yu Tian, Shibo He, and Jiming Chen.

  14. CLIP-AD: A language-guided staged dual-path model for zero-shot anomaly detection. arXiv, 2023. paper

    Xuhai Chen, Jiangning Zhang, Guanzhong Tian, Haoyang He, Wuhao Zhang, Yabiao Wang, Chengjie Wang, Yunsheng Wu, and Yong Liu.

  15. Exploring grounding potential of VQA-oriented GPT-4V for zero-shot anomaly detection. arXiv, 2023. paper

    Jiangning Zhang, Xuhai Chen, Zhucun Xue, Yabiao Wang, Chengjie Wang, and Yong Liu.

  16. Open-vocabulary video anomaly detection. arXiv, 2023. paper

    Peng Wu, Xuerong Zhou, Guansong Pang, Yujia Sun, Jing Liu, Peng Wang, and Yanning Zhang.

  17. Distilling out-of-distribution robustness from vision-language foundation models. NIPS, 2023. paper

    Andy Zhou, Jindong Wang, Yuxiong Wang, and Haohan Wang.

  18. Weakly supervised detection of gallucinations in LLM activations. arXiv, 2023. paper

    Miriam Rateike, Celia Cintas, John Wamburu, Tanya Akumu, and Skyler Speakman.

  19. How well does GPT-4v(ision) adapt to distribution shifts? A preliminary investigation. arXiv, 2023. paper

    Zhongyi Han, Guanglin Zhou, Rundong He, Jindong Wang, Xing Xie, Tailin Wu, Yilong Yin, Salman Khan, Lina Yao, Tongliang Liu, and Kun Zhang.

Reinforcement Learning

  1. Towards experienced anomaly detector through reinforcement learning. AAAI, 2018. paper

    Chengqiang Huang, Yulei Wu, Yuan Zuo, Ke Pei, and Geyong Min.

  2. Sequential anomaly detection using inverse reinforcement learning. KDD, 2019. paper

    Min-hwan Oh and Garud Iyengar.

  3. Toward deep supervised anomaly detection: Reinforcement learning from partially labeled anomaly data. KDD, 2021. paper

    Guansong Pang, Anton van den Hengel, Chunhua Shen, and Longbing Cao.

  4. Automated anomaly detection via curiosity-guided search and self-imitation learning. TNNLS, 2021. paper

    Yuening Li, Zhengzhang Chen, Daochen Zha, Kaixiong Zhou, Haifeng Jin, Haifeng Chen, and Xia Hu.

  5. Meta-AAD: Active anomaly detection with deep reinforcement learning. ICDM, 2020. paper

    Daochen Zha, Kwei-Herng Lai, Mingyang Wan, and Xia Hu.

Representation Learning

  1. Localizing anomalies from weakly-labeled videos. TIP, 2021. paper

    Hui Lv, Chuanwei Zhou, Zhen Cui, Chunyan Xu, Yong Li, and Jian Yang.

  2. PAC-Wrap: Semi-supervised PAC anomaly detection. KDD, 2022. paper

    Shuo Li, Xiayan Ji, Edgar Dobriban, Oleg Sokolsky, and Insup Lee.

  3. Effective end-to-end unsupervised outlier detection via inlier priority of discriminative network. NIPS, 2019. paper

    Siqi Wang, Yijie Zeng, Xinwang Liu, En Zhu, Jianping Yin, Chuanfu Xu, and Marius Kloft.

  4. AnomalyHop: An SSL-based image anomaly localization method. ICVCIP, 2021. paper

    Kaitai Zhang, Bin Wang, Wei Wang, Fahad Sohrab, Moncef Gabbouj, and C.-C. Jay Kuo.

  5. Learning representations of ultrahigh-dimensional data for random distance-based outlier detection. KDD, 2018. paper

    Guansong Pang, Longbing Cao, Ling Chen, and Huan Liu.

  6. Federated disentangled representation learning for unsupervised brain anomaly detection. NMI, 2022. paper

    Cosmin I. Bercea, Benedikt Wiestler, Daniel Rueckert, and Shadi Albarqouni.

  7. DSR–A dual subspace re-projection network for surface anomaly detection. ECCV, 2022. paper

    Vitjan Zavrtanik, Matej Kristan, and Danijel Skočaj.

  8. LGN-Net: Local-global normality network for video anomaly detection. arXiv, 2022. paper

    Mengyang Zhao, Yang Liu, Jing Liu, Di Li, and Xinhua Zeng.

  9. Glancing at the patch: Anomaly localization with global and local feature comparison. CVPR, 2021. paper

    Shenzhi Wang, Liwei Wu, Lei Cui, and Yujun Shen.

  10. SPot-the-difference self-supervised pre-training for anomaly detection and segmentation. ECCV, 2022. paper

    Yang Zou, Jongheon Jeong, Latha Pemula, Dongqing Zhang, and Onkar Dabeer.

  11. SSD: A unified framework for self-supervised outlier detection. ICLR, 2021. paper

    Vikash Sehwag, Mung Chiang, and Prateek Mittal.

  12. NETS: Extremely fast outlier detection from a data stream via set-based processing. VLDB, 2019. paper

    Susik Yoon, Jae-Gil Lee, and Byung Suk Lee.

  13. XGBOD: Improving supervised outlier detection with unsupervised representation learning. IJCNN, 2018. paper

    Yue Zhao and Maciej K. Hryniewicki.

  14. Red PANDA: Disambiguating anomaly detection by removing nuisance factors. ICLR, 2023. paper

    Niv Cohen, Jonathan Kahana, and Yedid Hoshen.

  15. TimesNet: Temporal 2D-variation modeling for general time series analysis. ICLR, 2023. paper

    Haixu Wu, Tengge Hu, Yong Liu, Hang Zhou, Jianmin Wang, and Mingsheng Long.

  16. SimpleNet: A simple network for image anomaly detection and localization. CVPR, 2023. paper

    Zhikang Liu, Yiming Zhou, Yuansheng Xu, and Zilei Wang.

  17. Unsupervised anomaly detection via nonlinear manifold learning. arXiv, 2023. paper

    Amin Yousefpour, Mehdi Shishehbor, Zahra Zanjani Foumani, and Ramin Bostanabad.

  18. Representation learning in anomaly detection: Successes, limits and a grand challenge. arXiv, 2023. paper

    Yedid Hoshen.

  19. A lightweight video anomaly detection model with weak supervision and adaptive instance selection. arXiv, 2023. paper

    Yang Wang, Jiaogen Zhou, and Jihong Guan.

Nonparametric Approach

  1. Real-time nonparametric anomaly detection in high-dimensional settings. TPAMI, 2021. paper

    Mehmet Necip Kurt, Yasin Yılmaz, and Xiaodong Wang.

  2. Neighborhood structure assisted non-negative matrix factorization and its application in unsupervised point anomaly detection. JMLR, 2021. paper

    Imtiaz Ahmed, Xia Ben Hu, Mithun P. Acharya, and Yu Ding.

  3. Bayesian nonparametric submodular video partition for robust anomaly detection. CVPR, 2022. paper

    Hitesh Sapkota and Qi Yu.

Mechanism

Dataset

  1. DoTA: Unsupervised detection of traffic anomaly in driving videos. TPAMI, 2022. paper

    Yu Yao, Xizi Wang, Mingze Xu, Zelin Pu, Yuchen Wang, Ella Atkins, and David Crandall.

  2. Revisiting time series outlier detection: Definitions and benchmarks. NIPS, 2021. paper

    Kwei-Herng Lai, Daochen Zha, Junjie Xu, Yue Zhao, Guanchu Wang, and Xia Hu.

  3. Street scene: A new dataset and evaluation protocol for video anomaly detection. WACV, 2020. paper

    Bharathkumar Ramachandra and Michael J. Jones.

  4. The eyecandies dataset for unsupervised multimodal anomaly detection and localization. ACCV, 2020. paper

    Luca Bonfiglioli, Marco Toschi, Davide Silvestri, Nicola Fioraio, and Daniele De Gregorio.

  5. Not only look, but also listen: Learning multimodal violence detection under weak supervision. ECCV, 2020. paper

    Peng Wu, Jing Liu, Yujia Shi, Yujia Sun, Fangtao Shao, Zhaoyang Wu, and Zhiwei Yang.

  6. A revisit of sparse coding based anomaly detection in stacked RNN framework. ICCV, 2017. paper

    Weixin Luo, Wen Liu, and Shenghua Gao.

  7. The MVTec anomaly detection dataset: A comprehensive real-world dataset for unsupervised anomaly detection. IJCV, 2021. paper

    Paul Bergmann, Kilian Batzner, Michael Fauser, David Sattlegger, and Carsten Steger.

  8. Anomaly detection in crowded scenes. CVPR, 2010. paper

    Vijay Mahadevan, Weixin Li, Viral Bhalodia, and Nuno Vasconcelos.

  9. Abnormal event detection at 150 FPS in MATLAB. ICCV, 2013. paper

    Cewu Lu, Jianping Shi, and Jiaya Jia.

  10. Surface defect saliency of magnetic tile. The Visual Computer, 2020. paper

    Yibin Huang, Congying Qiu, and Kui Yuan.

  11. Audio-visual dataset and method for anomaly detection in traffic videos. arXiv, 2023. paper

    Błażej Leporowski, Arian Bakhtiarnia, Nicole Bonnici, Adrian Muscat, Luca Zanella, Yiming Wang, and Alexandros Iosifidis.

  12. Flow-Bench: A dataset for computational workflow anomaly detection. arXiv, 2023. paper

    George Papadimitriou, Hongwei Jin, Cong Wang, Krishnan Raghavan, Anirban Mandal, Prasanna Balaprakash, and Ewa Deelman.

  13. In or Out? Fixing ImageNet out-of-distribution detection evaluation. ICML, 2023. paper

    Julian Bitterwolf, Maximilian Müller, and Matthias Hein.

  14. Temporal graphs anomaly emergence detection: Benchmarking for social media interactions. arXiv, 2023. paper

    Teddy Lazebnik and Or Iny.

  15. PKU-GoodsAD: A supermarket goods dataset for unsupervised anomaly detection and segmentation. arXiv, 2023. paper

    Jian Zhang, Ge Yang, Miaoju Ban, and Runwei Ding.

  16. PAD: A dataset and benchmark for pose-agnostic anomaly detection. NIPS, 2023. paper

    Qiang Zhou, Weize Li, Lihan Jiang, Guoliang Wang, Guyue Zhou, Shanghang Zhang, and Hao Zhao.

  17. The voraus-AD dataset for anomaly detection in robot applications. TRO, 2023. paper

    Jan Thieß Brockmann, Marco Rudolph, Bodo Rosenhahn, and Bastian Wandt.

Library

  1. ADBench: Anomaly detection benchmark. NIPS, 2022. paper

    Songqiao Han, Xiyang Hu, Hailiang Huang, Minqi Jiang, and Yue Zhao.

  2. TSB-UAD: An end-to-end benchmark suite for univariate time-series anomaly detection. VLDB, 2022. paper

    John Paparrizos, Yuhao Kang, Paul Boniol, Ruey S. Tsay, Themis Palpanas, and Michael J. Franklin.

  3. PyOD: A python toolbox for scalable outlier detection. JMLR, 2019. paper

    Yue Zhao, Zain Nasrullah, and Zheng Li.

  4. OpenOOD: Benchmarking generalized out-of-distribution detection. NIPS, 2022. paper

    Jingkang Yang, Pengyun Wang, Dejian Zou, Zitang Zhou, Kunyuan Ding, Wenxuan Peng, Haoqi Wang, Guangyao Chen, Bo Li, Yiyou Sun, Xuefeng Du, Kaiyang Zhou, Wayne Zhang, Dan Hendrycks, Yixuan Li, and Ziwei Liu.

  5. Towards a rigorous evaluation of rime-series anomaly detection. AAAI, 2022. paper

    Siwon Kim, Kukjin Choi, Hyun-Soo Choi, Byunghan Lee, and Sungroh Yoon.

  6. Volume under the surface: A new accuracy evaluation measure for time-series anomaly detection. VLDB, 2022. paper

    John Paparrizos, Paul Boniol, Themis Palpanas, Ruey S. Tsa, Aaron Elmore, and Michael J. Franklin.

  7. AnomalyKiTS: Anomaly detection toolkit for time series. AAAI, 2020. paper

    Dhaval Patel, Giridhar Ganapavarapu, Srideepika Jayaraman, Shuxin Lin, Anuradha Bhamidipaty, and Jayant Kalagnanam.

  8. TODS: An automated time series outlier detection system. AAAI, 2021. paper

    Kwei-Herng Lai, Daochen Zha, Guanchu Wang, Junjie Xu, Yue Zhao, Devesh Kumar, Yile Chen, Purav Zumkhawaka, Minyang Wan, Diego Martinez, and Xia Hu.

  9. BOND: Benchmarking unsupervised outlier node detection on static attributed graphs. NIPS, 2022. paper

    Kay Liu, Yingtong Dou, Yue Zhao, Xueying Ding, Xiyang Hu, Ruitong Zhang, Kaize Ding, Canyu Chen, Hao Peng, Kai Shu, Lichao Sun, Jundong Li, George H. Chen, Zhihao Jia, and Philip S. Yu.

  10. Ubnormal: New benchmark for supervised open-set video anomaly detection. CVPR, 2022. paper

    Andra Acsintoae, Andrei Florescu, Mariana-Iuliana Georgescu, Tudor Mare, Paul Sumedrea, Radu Tudor Ionescu, Fahad Shahbaz Khan, and Mubarak Shah.

  11. A new comprehensive benchmark for semi-supervised video anomaly detection and anticipation. CVPR, 2023. paper

    Congqi Cao, Yue Lu, Peng Wang, and Yanning Zhang.

  12. A framework for benchmarking class-out-of-distribution detection and its application to ImageNet. ICLR, 2023. paper

    Ido Galil, Mohammed Dabbah, and Ran El-Yaniv.

  13. BMAD: Benchmarks for medical anomaly detection. arXiv, 2023. paper

    Jinan Bao, Hanshi Sun, Hanqiu Deng, Yinsheng He, Zhaoxiang Zhang, and Xingyu Li.

  14. GADBench: Revisiting and benchmarking supervised Graph anomaly detection. arXiv, 2023. paper

    Jianheng Tang, Fengrui Hua, Ziqi Gao, Peilin Zhao, and Jia Li.

  15. A framework for benchmarking class-out-of-distribution detection and its application to ImageNet. ICLR, 2023. paper

    Ido Galil, Mohammed Dabbah, and Ran El-Yaniv.

  16. A large-scale benchmark for log parsing. arXiv, 2023. paper

    Zhihan Jiang, Jinyang Liu, Junjie Huang, Yichen Li, Yintong Huo, Jiazhen Gu, Zhuangbin Chen, Jieming Zhu, and Michael R. Lyu.

  17. Making the end-user a priority in benchmarking: OrionBench for unsupervised time series anomaly detection. arXiv, 2023. paper

    Sarah Alnegheimish, Laure Berti-Equille, and Kalyan Veeramachaneni.

  18. Towards scalable 3D anomaly detection and localization: A benchmark via 3D anomaly synthesis and a self-supervised learning network. arXiv, 2023. paper

    Wenqiao Li and Xiaohao Xu.

Analysis

  1. Are we certain it’s anomalous? arXiv, 2022. paper

    Alessandro Flaborea, Bardh Prenkaj, Bharti Munjal, Marco Aurelio Sterpa, Dario Aragona, Luca Podo, and Fabio Galasso.

  2. Understanding anomaly detection with deep invertible networks through hierarchies of distributions and features. NIPS, 2020. paper

    Robin Schirrmeister, Yuxuan Zhou, Tonio Ball, and Dan Zhang.

  3. Further analysis of outlier detection with deep generative models. NIPS, 2018. paper

    Ziyu Wang, Bin Dai, David Wipf, and Jun Zhu.

  4. Learning temporal regularity in video sequences. CVPR, 2016. paper

    Mahmudul Hasan, Jonghyun Choi, Jan Neumann, Amit K. Roy-Chowdhury, and Larry S. Davis.

  5. Local evaluation of time series anomaly detection algorithms. KDD, 2022. paper

    Alexis Huet, Jose Manuel Navarro, and Dario Rossi.

  6. Adaptive model pooling for online deep anomaly detection from a complex evolving data stream. KDD, 2022. paper

    Susik Yoon, Youngjun Lee, Jae-Gil Lee, and Byung Suk Lee.

  7. Anomaly detection in time series: A comprehensive evaluation. VLDB, 2022. paper

    Sebastian Schmidl, Phillip Wenig, and Thorsten Papenbrock.

  8. Anomaly detection requires better representations. arXiv, 2022. paper

    Tal Reiss, Niv Cohen, Eliahu Horwitz, Ron Abutbul, and Yedid Hoshen.

  9. Is it worth it? An experimental comparison of six deep and classical machine learning methods for unsupervised anomaly detection in time series. arXiv, 2022. paper

    Ferdinand Rewicki, Joachim Denzler, and Julia Niebling.

  10. FAPM: Fast adaptive patch memory for real-time industrial anomaly detection. arXiv, 2022. paper

    Shinji Yamada, Satoshi Kamiya, and Kazuhiro Hotta.

  11. Detecting data errors: Where are we and what needs to be done? VLDB, 2016. paper

    Ziawasch Abedjan, Xu Chu, Dong Deng, Raul Castro Fernandez, Ihab F. Ilyas, Mourad Ouzzani, Paolo Papotti, Michael Stonebraker, and Nan Tang.

  12. Data cleaning: Overview and emerging challenges. KDD, 2015. paper

    Xu Chu, Ihab F. Ilyas, Sanjay Krishnan, and Jiannan Wang.

  13. Video anomaly detection by solving decoupled spatio-temporal Jigsaw puzzles. ECCV, 2022. paper

    uodong Wang, Yunhong Wang, Jie Qin, Dongming Zhang, Xiuguo Bao, and Di Huang.

  14. Learning causal temporal relation and feature discrimination for anomaly detection. TIP, 2021. paper

    Peng Wu and Jing Liu.

  15. Unmasking the abnormal events in video. ICCV, 2017. paper

    Radu Tudor Ionescu, Sorina Smeureanu, Bogdan Alexe, and Marius Popescu.

  16. Temporal cycle-consistency learning. CVPR, 2019. paper

    Debidatta Dwibedi, Yusuf Aytar, Jonathan Tompson, Pierre Sermanet, and Andrew Zisserman.

  17. Look at adjacent frames: Video anomaly detection without offline training. ECCV, 2022. paper

    Yuqi Ouyang, Guodong Shen, and Victor Sanchez.

  18. How to allocate your label budget? Choosing between active learning and learning to reject in anomaly detection. AAAI, 2023. paper

    Lorenzo Perini, Daniele Giannuzzi, and Jesse Davis.

  19. Deep anomaly detection under labeling budget constraints. arXiv, 2023. paper

    Aodong Li, Chen Qiu, Padhraic Smyth, Marius Kloft, Stephan Mandt, and Maja Rudolph.

  20. Diversity-measurable anomaly detection. CVPR, 2023. paper

    Wenrui Liu, Hong Chang, Bingpeng Ma, Shiguang Shan, and Xilin Chen.

  21. Transferring the contamination factor between anomaly detection domains by shape similarity. AAAI, 2022. paper

    Lorenzo Perini, Vincent Vercruyssen, and Jesse Davis.

  22. Are transformers effective for time series forecasting? AAAI, 2023. paper

    Ailing Zeng, Muxi Chen, Lei Zhang, and Qiang Xu.

  23. AnoRand: A semi supervised deep learning anomaly detection method by random labeling. arXiv, 2023. paper

    Mansour Zoubeirou A Mayaki and Michel Riveill.

  24. AnoOnly: Semi-supervised anomaly detection without loss on normal data. arXiv, 2023. paper

    Yixuan Zhou, Peiyu Yang, Yi Qu, Xing Xu, Fumin Shen, and Heng Tao Shen.

  25. No free lunch: The Hazards of over-expressive representations in anomaly detection. arXiv, 2023. paper

    Tal Reiss, Niv Cohen, and Yedid Hoshen.

  26. Refining the optimization target for automatic univariate time series anomaly detection in monitoring services. arXiv, 2023. paper

    Manqing Dong, Zhanxiang Zhao, Yitong Geng, Wentao Li, Wei Wang, and Huai Jiang.

  27. Beyond sharing: Conflict-aware multivariate time series anomaly detection. arXiv, 2023. paper

    Haotian Si, Changhua Pei, Zhihan Li, Yadong Zhao, Jingjing Li, Haiming Zhang, Zulong Diao, Jianhui Li, Gaogang Xie, and Dan Pei.

  28. Neural network training strategy to enhance anomaly detection performance: A perspective on reconstruction loss amplification. arXiv, 2023. paper

    YeongHyeon Park, Sungho Kang, Myung Jin Kim, Hyeonho Jeong, Hyunkyu Park, Hyeong Seok Kim, and Juneho Yi.

  29. Self-supervision for tackling unsupervised anomaly detection: Pitfalls and opportunities. arXiv, 2023. paper

    Leman Akoglu and Jaemin Yoo.

  30. Tackling diverse minorities in imbalanced classification. CIKM, 2023. paper

    Kwei-Herng Lai, Daochen Zha, Huiyuan Chen, Mangesh Bendre, Yuzhong Chen, Mahashweta Das, Hao Yang, and Xia Hu.

  31. IOMatch: Simplifying open-set semi-supervised learning with joint inliers and outliers utilization. ICCV, 2023. paper

    Zekun Li, Lei Qi, Yinghuan Shi, and Yang Gao.

  32. Environment-biased feature ranking for novelty detection robustness. ICCV, 2024. paper

    Stefan Smeu, Elena Burceanu, Emanuela Haller, and Andrei Liviu Nicolicioiu.

  33. Going beyond familiar features for deep anomaly detection. arXiv, 2023. paper

    Sarath Sivaprasad and Mario Fritz.

  34. Template-guided hierarchical feature restoration for anomaly detection. ICCV, 2023. paper

    Hewei Guo, Liping Ren, Jingjing Fu, Yuwang Wang, Zhizheng Zhang, Cuiling Lan, Haoqian Wang, and Xinwen Hou.

  35. Anomaly detection in the presence of irrelevant features. arXiv, 2023. paper

    Marat Freytsis, Maxim Perelstein, and Yik Chuen San.

  36. BatchNorm-based weakly supervised video anomaly detection. arXiv, 2023. paper

    Yixuan Zhou, Yi Qu, Xing Xu, Fumin Shen, Jingkuan Song, and Hengtao Shen.

  37. ADT: Agent-based dynamic thresholding for anomaly detection. arXiv, 2023. paper

    Xue Yang, Enda Howley, and Micheal Schukat.

  38. F1-EV Score: Measuring the likelihood of estimating a good decision threshold for semi-supervised anomaly detection. ICASSP, 2024. paper

    Kevin Wilkinghoff and Keisuke Imoto.

Domain Adaptation

  1. Few-shot domain-adaptive anomaly detection for cross-site brain imagess. TPAMI, 2022. paper

    Jianpo Su, Hui Shen, Limin Peng, and Dewen Hu.

  2. Registration based few-shot anomaly detection. ECCV, 2021. paper

    Chaoqin Huang, Haoyan Guan, Aofan Jiang, Ya Zhang, Michael Spratling, and Yanfeng Wang.

  3. Learning unsupervised metaformer for anomaly detection. CVPR, 2021. paper

    Jhih-Ciang Wu, Dingjie Chen, Chiou-Shann Fuh, and Tyng-Luh Liu.

  4. Generic and scalable framework for automated time-series anomaly detection. KDD, 2019. paper

    Nikolay Laptev, Saeed Amizadeh, and Ian Flint.

  5. Transfer learning for anomaly detection through localized and unsupervised instance selection. AAAI, 2020. paper

    Vincent Vercruyssen, Wannes Meert, and Jesse Davis.

  6. FewSOME: Few shot anomaly detection. arXiv, 2023. paper

    Niamh Belton, Misgina Tsighe Hagos, Aonghus Lawlor, and Kathleen M. Curran.

  7. Cross-domain video anomaly detection without target domain adaptation. WACV, 2023. paper

    Abhishek Aich, Kuanchuan Peng, and Amit K. Roy-Chowdhury.

  8. Zero-shot anomaly detection without foundation models. arXiv, 2023. paper

    Aodong Li, Chen Qiu, Marius Kloft, Padhraic Smyth, Maja Rudolph, and Stephan Mandt.

  9. Pushing the limits of fewshot anomaly detection in industry vision: A graphcore. ICLR, 2023. paper

    Guoyang Xie, Jinbao Wang, Jiaqi Liu, Yaochu Jin, and Feng Zheng.

  10. Meta-learning for robust anomaly detection. AISTATS, 2023. paper

    Atsutoshi Kumagai, Tomoharu Iwata, Hiroshi Takahashi, and Yasuhiro Fujiwara.

  11. OneShotSTL: One-shot seasonal-trend decomposition for online time series anomaly detection and forecasting. arXiv, 2023. paper

    Xiao He, Ye Li, Jian Tan, Bin Wu, and Feifei Li.

  12. Context-aware domain adaptation for time series anomaly detection. arXiv, 2023. paper

    Kwei-Herng Lai, Lan Wang, Huiyuan Chen, Kaixiong Zhou, Fei Wang, Hao Yang, and Xia Hu.

  13. MetaGAD: Learning to meta transfer for few-shot graph anomaly detection. arXiv, 2023. paper

    Xiongxiao Xu, Kaize Ding, Canyu Chen, and Kai Shu.

  14. A zero-/few-shot anomaly classification and segmentation method for CVPR 2023 VAND workshop challenge tracks 1&2: 1st place on zero-shot AD and 4th place on few-shot AD. arXiv, 2023. paper

    Xuhai Chen, Yue Han, and Jiangning Zhang.

  15. Winning solution for the CVPR2023 visual anomaly and novelty detection challenge: Multimodal prompting for data-centric anomaly detection. CVPR, 2023. paper

    Yunkang Cao, Xiaohao Xu, Chen Sun, Yuqi Cheng, Liang Gao, and Weiming Shen.

  16. Zero-shot anomaly detection with pre-trained segmentation models. VAND, 2023. paper

    Matthew Baugh, James Batten, Johanna P. Müller, and Bernhard Kainz.

  17. Optimizing PatchCore for few/many-shot anomaly detection. arXiv, 2023. paper

    João Santos, Triet Tran, and Oliver Rippel.

  18. Multi-scale memory comparison for zero-/few-shot anomaly detection. CVPR, 2023. paper

    Chaoqin Huang, Aofan Jiang, Ya Zhang, and Yanfeng Wang.

  19. AutoML for outlier detection with optimal Ttransport distances. IJCAI, 2023. paper

    Prabhant Singh and Joaquin Vanschoren.

  20. AutoML for outlier detection with optimal Ttransport distances. ICCV, 2023. paper

    Zheng Fang, Xiaoyang Wang, Haocheng Li, Jiejie Liu, Qiugui Hu, and Jimin Xiao.

  21. Tight rates in supervised outlier transfer learning. arXiv, 2023. paper

    Mohammadreza M. Kalan and Samory Kpotufe.

  22. Few-shot anomaly detection with adversarial loss for robust feature representations. BMVC, 2023. paper

    Jae Young Lee, Wonjun Lee, Jaehyun Choi, Yongkwi Lee, Young Seog Yoon, and Samory Kpotufe.

  23. When model meets new normals: Test-time adaptation for unsupervised time-series anomaly detection. arXiv, 2023. paper

    Dongmin Kim, Sunghyun Park, and Jaegul Choo.

  24. Few shot part segmentation reveals compositional logic for industrial anomaly detection. arXiv, 2023. paper

    Soopil Kim, Sion An, Philip Chikontwe, Myeongkyun Kang, Ehsan Adeli, Kilian M. Pohl, and Sanghyun Park.

  25. METER: A dynamic concept adaptation framework for online anomaly detection. arXiv, 2023. paper

    Jiaqi Zhu, Shaofeng Cai, Fang Deng, Beng Chin Ooi, and Wenqiao Zhang.

Loss Function

  1. Detecting regions of maximal divergence for spatio-temporal anomaly detection. TPAMI, 2018. paper

    Björn Barz, Erik Rodner, Yanira Guanche Garcia, and Joachim Denzler.

  2. Convex formulation for learning from positive and unlabeled data. ICML, 2015. paper

    Marthinus Christoffel Du Plessis, Gang Niu, and Masashi Sugiyama.

  3. Anomaly detection with score distribution discrimination. KDD, 2023. paper

    Minqi Jiang, Songqiao Han, and Hailiang Huang.

  4. AdaFocal: Calibration-aware adaptive focal loss. NIPS, 2022. paper

    Arindam Ghosh, Arindam_Ghosh, and Thomas Schaaf, Matthew R. Gormley.

  5. DSV: An alignment validation loss for self-supervised outlier model selection. arXiv, 2023. paper

    Jaemin Yoo, Yue Zhao, Lingxiao Zhao, and Leman Akoglu.

  6. Simple and effective out-of-distribution detection via cosine-based softmax loss. ICCV, 2023. paper

    SoonCheol Noh, DongEon Jeong, and Jee-Hyong Lee.

  7. Temporal shift - multi-objective loss function for improved anomaly fall detection. arXiv, 2023. paper

    Stefan Denkovski, Shehroz S. Khan, and Alex Mihailidis.

Model Selection

  1. Automatic unsupervised outlier model selection. NIPS, 2021. paper

    Yue Zhao, Ryan Rossi, and Leman Akoglu.

  2. Toward unsupervised outlier model selection. ICDM, 2022. paper

    Yue Zhao, Sean Zhang, and Leman Akoglu.

  3. Unsupervised model selection for time-series anomaly detection. ICLR, 2023. paper

    Mononito Goswami, Cristian Ignacio Challu, Laurent Callot, Lenon Minorics, and Andrey Kan.

  4. Fast Unsupervised deep outlier model selection with hypernetworks. arXiv, 2023. paper

    Xueying Ding, Yue Zhao, and Leman Akoglu.

  5. ADGym: Design choices for deep anomaly detection. NIPS, 2023. paper

    Minqi Jiang, Chaochuan Hou, Ao Zheng, Songqiao Han,Hailiang Huang, Qingsong Wen, Xiyang Hu, and Yue Zha.

  6. Model selection of anomaly detectors in the absence of labeled validation data. arXiv, 2023. paper

    Clement Fung, Chen Qiu, Aodong Li, and Maja Rudolph.

  7. TransNAS-TSAD: Harnessing transformers for multi-objective neural architecture search in time series anomaly detection. arXiv, 2023. paper

    Ijaz Ul Haq and Byung Suk Lee.

  8. HyperMix: Out-of-distribution detection and classification in few-shot settings. arXiv, 2023. paper

    Nikhil Mehta, Kevin J Liang, Jing Huang, Fujen Chu, Li Yin, and Tal Hassner.

Knowledge Distillation

  1. Anomaly detection via reverse distillation from one-class embedding. CVPR, 2022. paper

    Hanqiu Deng and Xingyu Li.

  2. Multiresolution knowledge distillation for anomaly detection. CVPR, 2021. paper

    Mohammadreza Salehi, Niousha Sadjadi, Soroosh Baselizadeh, Mohammad H. Rohban, and Hamid R. Rabiee.

  3. Uninformed students: Student-teacher anomaly detection with discriminative latent embeddings. CVPR, 2020. paper

    Paul Bergmann, Michael Fauser, David Sattlegger, and Carsten Steger.

  4. Reconstructed student-teacher and discriminative networks for anomaly detection. IROS, 2022. paper

    Shinji Yamada, Satoshi Kamiya, and Kazuhiro Hotta.

  5. DeSTSeg: Segmentation guided denoising student-teacher for anomaly detection. arXiv, 2022. paper

    Xuan Zhang, Shiyu Li, Xi Li, Ping Huang, Jiulong Shan, and Ting Chen.

  6. Asymmetric student-teacher networks for industrial anomaly detection. WACV, 2023. paper

    Marco Rudolph, Tom Wehrbein, Bodo Rosenhahn, and Bastian Wandt.

  7. In-painting radiography images for unsupervised anomaly detection. CVPR, 2023. paper

    Tiange Xiang, Yongyi Lu, Alan L. Yuille, Chaoyi Zhang, Weidong Cai, and Zongwei Zhou.

  8. Self-distilled masked auto-encoders are efficient video anomaly detectors. arXiv, 2023. paper

    Nicolae-Catalin Ristea, Florinel-Alin Croitoru, Radu Tudor Ionescu, Marius Popescu, Fahad Shahbaz Khan, and Mubarak Shah.

  9. Contextual affinity distillation for image anomaly detection. arXiv, 2023. paper

    Jie Zhang, Masanori Suganuma, and Takayuki Okatani.

  10. Reinforcement learning by guided safe exploration. ECAI, 2023. paper

    Qisong Yang, Thiago D. Simão, Nils Jansen, Simon H. Tindemans, and Matthijs T. J. Spaan.

  11. Prior knowledge guided network for video anomaly detection. arXiv, 2023. paper

    Zhewen Deng, Dongyue Chen, and Shizhuo Deng.

Data Augmentation

  1. Interpretable, multidimensional, multimodal anomaly detection with negative sampling for detection of device failure. ICML, 2020. paper

    John Sipple.

  2. Doping: Generative data augmentation for unsupervised anomaly detection with GAN. ICDM, 2018. paper

    Swee Kiat Lim, Yi Loo, Ngoc-Trung Tran, Ngai-Man Cheung, Gemma Roig, and Yuval Elovici.

  3. Detecting anomalies within time series using local neural transformations. arXiv, 2022. paper

    Tim Schneider, Chen Qiu, Marius Kloft, Decky Aspandi Latif, Steffen Staab, Stephan Mandt, and Maja Rudolph.

  4. Deep anomaly detection using geometric transformations. NIPS, 2018. paper

    Izhak Golan and Ran El-Yaniv.

  5. Locally varying distance transform for unsupervised visual anomaly detection. ECCV, 2022. paper

    Wenyan Lin, Zhonghang Liu, and Siying Liu.

  6. DAGAD: Data augmentation for graph anomaly detection. ICDM, 2022. paper

    Fanzhen Liu, Xiaoxiao Ma, Jia Wu, Jian Yang, Shan Xue†, Amin Beheshti, Chuan Zhou, Hao Peng, Quan Z. Sheng, and Charu C. Aggarwal.

  7. Unsupervised dimension-contribution-aware embeddings transformation for anomaly detection. KBS, 2022. paper

    Liang Xi, Chenchen Liang, Han Liu, and Ao Li.

  8. No shifted augmentations (NSA): Compact distributions for robust self-supervised anomaly detection. WACV, 2023. paper

    Mohamed Yousef, Marcel Ackermann, Unmesh Kurup, and Tom Bishop.

  9. End-to-end augmentation hyperparameter tuning for self-supervised anomaly detection. arXiv, 2023. paper

    Jaemin Yoo, Lingxiao Zhao, and Leman Akoglu.

  10. Data augmentation is a hyperparameter: Cherry-picked self-supervision for unsupervised anomaly detection is creating the illusion of success. TMLR, 2023. paper

    Jaemin Yoo, Tiancheng Zhao, and Leman Akoglu.

  11. Diverse data augmentation with diffusions for effective test-time prompt tuning. ICCV, 2023. paper

    Chunmei Feng, Kai Yu, Yong Liu, Salman Khan, and Wangmeng Zuo.

  12. GraphPatcher: Mitigating degree bias for graph neural networks via test-time augmentation. NIPS, 2023. paper

    Mingxuan Ju, Tong Zhao, Wenhao Yu, Neil Shah, and Yanfang Ye.

  13. Towards reliable AI model deployments: Multiple input mixup for out-of-distribution detection. AAAI, 2024. paper

    Dasol Choi and Dongbin Na.

  14. Data augmentation for supervised graph outlier detection with latent diffusion models. arXiv, 2023. paper

    Kay Liu, Hengrui Zhang, Ziqing Hu, Fangxin Wang, and Philip S. Yu.

Outlier Exposure

  1. Latent outlier exposure for anomaly detection with contaminated data. ICML, 2022. paper

    Chen Qiu, Aodong Li, Marius Kloft, Maja Rudolph, and Stephan Mandt.

  2. Deep anomaly detection with outlier exposure. ICLR, 2019. paper

    Dan Hendrycks, Mantas Mazeika, and Thomas Dietterich.

  3. A simple and effective baseline for out-of-distribution detection using abstention. ICLR, 2021. paper

    Sunil Thulasidasan, Sushil Thapa, Sayera Dhaubhadel, Gopinath Chennupati, Tanmoy Bhattacharya, and Jeff Bilmes.

  4. Does your dermatology classifier know what it doesn’t know? Detecting the long-tail of unseen conditions. Medical Image Analysis, 2022. paper

    Abhijit Guha Roy, Jie Ren, Shekoofeh Azizi, Aaron Loh, Vivek Natarajan, Basil Mustafa, Nick Pawlowski, Jan Freyberg, Yuan Liu, Zach Beaver, Nam Vo, Peggy Bui, Samantha Winter, Patricia MacWilliams, Greg S. Corrado, Umesh Telang, Yun Liu, Taylan Cemgil, Alan Karthikesalingam, Balaji Lakshminarayanan, and Jim Winkens.

  5. OpenMix: Exploring outlier samples for misclassification detection. CVPR, 2023. paper

    Fei Zhu, Zhen Cheng, Xuyao Zhang, and Chenglin Liu.

  6. VOS: Learning what you don't know by virtual outlier synthesis. ICLR, 2023. paper

    Xuefeng Du, Zhaoning Wang, Mu Cai, and Yixuan Li.

  7. Deep anomaly detection under labeling budget constraints. ICML, 2023. paper

    Aodong Li, Chen Qiu, Marius Kloft, Padhraic Smyth, Stephan Mandt, and Maja Rudolph.

  8. Pseudo outlier exposure for out-of-distribution detection using pretrained Transformers. ACL, 2023. paper

    Jaeyoung Kim, Kyuheon Jung, Dongbin Na, Sion Jang, Eunbin Park, and Sungchul Choi.

  9. Harder synthetic anomalies to improve OOD detection in medical images. arXiv, 2023. paper

    Sergio Naval Marimont and Giacomo Tarroni.

  10. AutoLog: A log sequence synthesis framework for anomaly detection. arXiv, 2023. paper

    Yintong Huo, Yichen Li, Yuxin Su, Pinjia He, Zifan Xie, and Michael R. Lyu.

  11. Non-parametric outlier synthesis. ICLR, 2023. paper

    Leitian Tao, Xuefeng Du, Jerry Zhu, and Yixuan Li.

  12. Dream the impossible: Outlier imagination with diffusion models. NIPS, 2023. paper

    Xuefeng Du, Yiyou Sun, Xiaojin Zhu, and Yixuan Li.

  13. On the powerfulness of textual outlier exposure for visual OOD detection. arXiv, 2023. paper

    Sangha Park, Jisoo Mok, Dahuin Jung, Saehyung Lee, and Sungroh Yoon.

  14. A coarse-to-fine pseudo-labeling (C2FPL) framework for unsupervised video anomaly detection. WACV, 2024. paper

    Anas Al-lahham, Nurbek Tastan, Zaigham Zaheer, and Karthik Nandakumar.

  15. Diversified outlier exposure for out-of-distribution detection via informative extrapolation. NIPS, 2023. paper

    Jianing Zhu, Geng Yu, Jiangchao Yao, Tongliang Liu, Gang Niu, Masashi Sugiyama, and Bo Han.

  16. Out-of-distribution detection learning with unreliable out-of-distribution sources. NIPS, 2023. paper

    Haotian Zheng, Qizhou Wang, Zhen Fang, Xiaobo Xia, Feng Liu, Tongliang Liu, and Bo Han.

  17. NNG-Mix: Improving semi-supervised anomaly detection with pseudo-anomaly generation. arXiv, 2023. paper

    Hao Dong, Gaëtan Frusque, Yue Zhao, Eleni Chatzi, and Olga Fink.

Contrastive Learning

  1. Graph anomaly detection via multi-scale contrastive learning networks with augmented view. AAAI, 2023. paper

    Jingcan Duan, Siwei Wang, Pei Zhang, En Zhu, Jingtao Hu, Hu Jin, Yue Liu, and Zhibin Dong.

  2. Partial and asymmetric contrastive learning for out-of-distribution detection in long-tailed recognition. ICML, 2022. paper

    Haotao Wang, Aston Zhang, Yi Zhu, Shuai Zheng, Mu Li, Alex Smola, and Zhangyang Wang.

  3. Focus your distribution: Coarse-to-fine non-contrastive learning for anomaly detection and localization. ICME, 2022. paper

    Ye Zheng, Xiang Wang, Rui Deng, Tianpeng Bao, Rui Zhao, and Liwei Wu.

  4. MGFN: Magnitude-contrastive glance-and-focus network for weakly-supervised video anomaly detection. arXiv, 2023. paper

    Yingxian Chen, Zhengzhe Liu, Baoheng Zhang, Wilton Fok, Xiaojuan Qi, and Yik-Chung Wu.

  5. On the effectiveness of out-of-distribution data in self-supervised long-tail learning. ICLR, 2023. paper

    Jianhong Bai, Zuozhu Liu, Hualiang Wang, Jin Hao, Yang Feng, Huanpeng Chu, and Haoji Hu.

  6. Hierarchical semantic contrast for scene-aware video anomaly detection. CVPR, 2023. paper

    Shengyang Sun and Xiaojin Gong.

  7. Hierarchical semi-supervised contrastive learning for contamination-resistant anomaly detection. ECCV, 2022. paper

    Gaoang Wang, Yibing Zhan, Xinchao Wang, Mingli Song, and Klara Nahrstedt.

  8. Reconstruction enhanced multi-view contrastive learning for anomaly detection on attributed networks. IJCAI, 2022. paper

    Jiaqiang Zhang, Senzhang Wang, and Songcan Chen.

  9. SimTS: Rethinking contrastive representation learning for time series forecasting. arXiv, 2023. paper

    Xiaochen Zheng, Xingyu Chen, Manuel Schürch, Amina Mollaysa, Ahmed Allam, and Michael Krauthammer.

  10. CARLA: A self-supervised contrastive representation learning approach for time series anomaly detection. arXiv, 2023. paper

    Zahra Zamanzadeh Darban, Geoffrey I. Webb, Shirui Pan, and Mahsa Salehi.

  11. Unilaterally aggregated contrastive learning with hierarchical augmentation for anomaly detection. ICCV, 2023. paper

    Guodong Wang, Yunhong Wang, Jie Qin, Dongming Zhang, Xiuguo Bao, and Di Huang.

  12. Cross-domain graph anomaly detection via anomaly-aware contrastive alignment. AAAI, 2023. paper

    Qizhou Wang, Guansong Pang, Mahsa Salehi, Wray Buntine, and Christopher Leckie.

  13. Robust fraud detection via supervised contrastive learning. arXiv, 2023. paper

    Vinay M.S., Shuhan Yuan, and Xintao Wu.

  14. Understanding normalization in contrastive representation learning and out-of-distribution detection. arXiv, 2023. paper

    Tai Le-Gia and Jaehyun Ahn.

  15. Generating and reweighting dense contrastive patterns for unsupervised anomaly detection. arXiv, 2023. paper

    Songmin Dai, Yifan Wu, Xiaoqiang Li, and Xiangyang Xue.

Continual Learning

  1. PANDA: Adapting pretrained features for anomaly detection and segmentation. CVPR, 2021. paper

    Tal Reiss, Niv Cohen, Liron Bergman, and Yedid Hoshen.

  2. Continual learning for anomaly detection in surveillance videos. CVPR, 2020. paper

    Keval Doshi and Yasin Yilmaz.

  3. Rethinking video anomaly detection-A continual learning approach. WACV, 2022. paper

    Keval Doshi and Yasin Yilmaz.

  4. Continual learning for anomaly detection with variational autoencoder. ICASSP, 2019. paper

    Felix Wiewel and Bin Yang.

  5. Lifelong anomaly detection through unlearning. CCS, 2019. paper

    Min Du, Zhi Chen, Chang Liu, Rajvardhan Oak, and Dawn Song.

  6. xStream: Outlier detection in feature-evolving data streams. KDD, 2020. paper

    Emaad Manzoor, Hemank Lamba, and Leman Akoglu.

  7. Continual learning approaches for anomaly detection. arXiv, 2022. paper

    Davide Dalle Pezze, Eugenia Anello, Chiara Masiero, and Gian Antonio Susto.

  8. Towards lightweight, model-agnostic and diversity-aware active anomaly detection. ICLR, 2023. paper

    Xu Zhang, Yuan Zhao, Ziang Cui, Liqun Li, Shilin He, Qingwei Lin, Yingnong Dang, Saravan Rajmohan, and Dongmei Zhang.

  9. An iterative method for unsupervised robust anomaly detection under data contamination. arXiv, 2023. paper

    Minkyung Kim, Jongmin Yu, Junsik Kim, Tae-Hyun Oh, and Jun Kyun Choi.

  10. Look at me, no replay! SurpriseNet: Anomaly detection inspired class incremental learning. CIKM, 2023. paper

    Anton Lee, Yaqian Zhang, Heitor Murilo Gomes, Albert Bifet, and Bernhard Pfahringer.

Active Learning

  1. DADMoE: Anomaly detection with mixture-of-experts from noisy labels. AAAI, 2023. paper

    Yue Zhao, Guoqing Zheng, Subhabrata Mukherjee, Robert McCann, and Ahmed Awadallah.

  2. Incorporating expert feedback into active anomaly discovery. ICDM, 2016. paper

    Shubhomoy Das, Weng-Keen Wong, Thomas Dietterich, Alan Fern, and Andrew Emmott.

  3. Training ensembles with inliers and outliers for semi-supervised active learning. arXiv, 2023. paper

    Vladan Stojnić, Zakaria Laskar, and Giorgos Tolias.

  4. Active anomaly detection based on deep one-class classification. Pattern Recognition Letters, 2023. paper

    Minkyung Kim, Junsik Kim, Jongmin Yu, and Jun Kyun Choi.

  5. Self-supervised anomaly detection via neural autoregressive flows with active learning. NIPS, 2021. paper

    Jiaxin Zhang, Kyle Saleeby, Thomas Feldhausen, Sirui Bi, Alex Plotkowski, and David Womble.

Statistics

  1. (1+ε)-class classification: An anomaly detection method for highly imbalanced or incomplete data sets. JMLR, 2021. paper

    Maxim Borisyak, Artem Ryzhikov, Andrey Ustyuzhanin, Denis Derkach, Fedor Ratnikov, and Olga Mineeva.

  2. Deep semi-supervised anomaly detection. ICLR, 2020. paper

    Lukas Ruff, Robert A. Vandermeulen, Nico Görnitz, Alexander Binder, Emmanuel Müller, Klaus-Robert Müller, and Marius Kloft.

  3. Online learning and sequential anomaly detection in trajectories. TPAMI, 2014. paper

    Rikard Laxhammar and Göran Falkman.

  4. COPOD: Copula-based outlier detection. ICDM, 2020. paper

    Zheng Li, Yue Zhao, Nicola Botta, Cezar Ionescu, and Xiyang Hu.

  5. ECOD: Unsupervised outlier detection using empirical cumulative distribution functions. TKDE, 2022. paper

    Zheng Li, Yue Zhao, Xiyang Hu, Nicola Botta, Cezar Ionescu, and George Chen.

  6. GLAD: A global-to-local anomaly detector. WACV, 2023. paper

    Aitor Artola, Yannis Kolodziej, Jean-Michel Morel, and Thibaud Ehret.

  7. Anomaly dtection via Gumbel noise score matching. arXiv, 2023. paper

    Ahsan Mahmood, Junier Oliva, and Martin Styner.

  8. Unsupervised anomaly detection with rejection. arXiv, 2023. paper

    Lorenzo Perini and Jesse Davis.

  9. A robust likelihood model for novelty detection. CVPR, 2023. paper

    Ranya Almohsen, Shivang Patel, Donald A. Adjeroh, and Gianfranco Doretto.

  10. Spatially smoothed robust covariance estimation for local outlier detection. arXiv, 2023. paper

    Patricia Puchhammer and Peter Filzmoser.

  11. Anomaly detection using score-based perturbation resilience. ICCV, 2023. paper

    Woosang Shin,Jonghyeon Lee, Taehan Lee, Sangmoon Lee, and Jong Pil Yun.

  12. Weighted subspace anomaly detection in high-dimensional space. Pattern Recognition, 2023. paper

    Jiankai Tu, Huan Liu, and Chunguang Li.

  13. Mutual information maximization for semi-supervised anomaly detection. KBS, 2023. paper

    Shuo Liu and Maozai Tian.

  14. Sparse anomaly detection across referentials: A rank-based higher criticism approach. arXiv, 2023. paper

    Ivo V. Stoepker, Rui M. Castro, and Ery Arias-Castro.

Density Estimation

  1. DenseHybrid: Hybrid anomaly detection for dense open-set recognition. ECCV, 2022. paper

    Matej Grcić, Petra Bevandić., and Siniša Šegvić.

  2. Adaptive multi-stage density ratio estimation for learning latent space energy-based model. NIPS, 2022. paper

    Zhisheng Xiao, and Tian Han.

  3. Ultrafast local outlier detection from a data stream with stationary region skipping. KDD, 2020. paper

    Susik Yoon, Jae-Gil Lee, and Byung Suk Lee.

  4. A discriminative framework for anomaly detection in large videos. ECCV, 2016. paper

    Allison Del Giorno, J. Andrew Bagnell, and Martial Hebert.

  5. Hierarchical density estimates for data clustering, visualization, and outlier detection. ACM Transactions on Knowledge Discovery from Data, 2015. paper

    Ricardo J. G. B. Campello, Davoud Moulavi, Arthur Zimek, and Jörg Sander.

  6. Unsupervised anomaly detection by robust density estimation. AAAI, 2022. paper

    Boyang Liu, Pangning Tan, and Jiayu Zhou.

  7. Understanding and mitigating data contamination in deep anomaly detection: A kernel-based approach. IJCAI, 2022. paper

    Shuang Wu, Jingyu Zhao, and Guangjian Tian.

  8. Anomaly detection with variance stabilized density estimation. arXiv, 2023. paper

    Amit Rozner, Barak Battash, Henry Li, Lior Wolf, and Ofir Lindenbaum.

  9. Beyond the benchmark: Detecting diverse anomalies in videos. arXiv, 2023. paper

    Yoav Arad and Michael Werman.

  10. Quantile-based maximum likelihood training for outlier detection. arXiv, 2023. paper

    Masoud Taghikhah, Nishant Kumar, Siniša Šegvić, Abouzar Eslami, and Stefan Gumhold.

  11. Unsupervised anomaly detection & diagnosis: A Stein variational gradient descent approach. CIKM, 2023. paper

    Zhichao Chen, Leilei Ding, Jianmin Huang, Zhixuan Chu, Qingyang Dai, and Hao Wang.

  12. Set features for anomaly detection. arXiv, 2023. paper

    Niv Cohen, Issar Tzachor, and Yedid Hoshen.

Support Vector

  1. Patch SVDD: Patch-level SVDD for anomaly detection and segmentation. ACCV, 2020. paper

    Jihun Yi and Sungroh Yoon.

  2. Multiclass anomaly detector: The CS++ support vector machine. JMLR, 2020. paper

    Alistair Shilton, Sutharshan Rajasegarar, and Marimuthu Palaniswami.

  3. Timeseries anomaly detection using temporal hierarchical one-class network. NIPS, 2020. paper

    Lifeng Shen, Zhuocong Li, and James Kwok.

  4. LOSDD: Leave-out support vector data description for outlier detection. arXiv, 2022. paper

    Daniel Boiar, Thomas Liebig, and Erich Schubert.

  5. Anomaly detection using one-class neural networks. arXiv, 2018. paper

    Raghavendra Chalapathy, Aditya Krishna Menon, and Sanjay Chawla.

  6. Deep graph stream SVDD: Anomaly detection in cyber-physical systems. PAKDD, 2023. paper

    Ehtesamul Azim, Dongjie Wang, and Yanjie Fu.

  7. Regression-based hyperparameter learning for support vector machines. TNNLS, 2023. paper

    Shili Peng, Wenwu Wang, Yinli Chen, Xueling Zhong, and Qinghua Hu.

Sparse Coding

  1. Video anomaly detection with sparse coding inspired deep neural networks. TPAMI, 2021. paper

    Weixin Luo, Wen Liu, Dongze Lian, Jinhui Tang, Lixin Duan, Xi Peng, and Shenghua Gao.

  2. Self-supervised sparse representation for video anomaly detection. ECCV, 2022. paper

    Jhihciang Wu, Heyen Hsieh, Dingjie Chen, Chioushann Fuh, and Tyngluh Liu.

  3. Fast abnormal event detection. IJCV, 2019. paper

    Cewu Lu, Jianping Shi, Weiming Wang, and Jiaya Jia.

  4. A revisit of sparse coding based anomaly detection in stacked RNN framework. ICCV, 2017. paper

    Weixin Luo, Wen Liu, and Shenghua Gao.

  5. HashNWalk: Hash and random walk based anomaly detection in hyperedge streams. IJCAI, 2022. paper

    Geon Lee, Minyoung Choe, and Kijung Shin.

Energy Model

  1. Deep structured energy based models for anomaly detection. ICML, 2016. paper

    Shuangfei Zhai, Yu Cheng, Weining Lu, and Zhongfei Zhang.

  2. Energy-based out-of-distribution detection. NIPS, 2020. paper

    Weitang Liu, Xiaoyun Wang, John Owens, and Yixuan Li.

  3. Learning neural set functions under the optimal subset oracle. NIPS, 2022. paper

    Zijing Ou, Tingyang Xu, Qinliang Su, Yingzhen Li, Peilin Zhao, and Yatao Bian.

  4. Energy-based out-of-distribution detection for graph neural networks. ICLR, 2023. paper

    Qitian Wu, Yiting Chen, Chenxiao Yang, and Junchi Yan.

  5. Latent space energy-based model for fine-grained open set recognition. arXiv, 2023. paper

    Wentao Bao, Qi Yu, and Yu Kong.

  6. Energy-based models for anomaly detection: A manifold diffusion recovery approach. NIPS, 2023. paper

    Sangwoong Yoon, Young-Uk Jin, Yung-Kyun Noh, and Frank C. Park.

Memory Bank

  1. Towards total recall in industrial anomaly detection. CVPR, 2022. paper

    Karsten Roth, Latha Pemula, Joaquin Zepeda, Bernhard Schölkopf, Thomas Brox, and Peter Gehler.

  2. Memorizing normality to detect anomaly: Memory-augmented deep autoencoder for unsupervised anomaly detection. ICCV, 2019. paper

    Dong Gong, Lingqiao Liu, Vuong Le, Budhaditya Saha, Moussa Reda Mansour, Svetha Venkatesh, and Anton van den Hengel.

  3. SQUID: Deep feature in-painting for unsupervised anomaly detection. CVPR, 2023. paper

    Tiange Xiang, Yixiao Zhang, Yongyi Lu, Alan L. Yuille, Chaoyi Zhang, Weidong Cai, and Zongwei Zhou.

  4. Shape-guided dual-memory learning for 3D anomaly detection. ICML, 2023. paper

    Yumin Chu, Liu Chieh, Ting-I Hsieh, Hwann-Tzong Chen, and Tyng-Luh Liu.

  5. That's BAD: Blind anomaly detection by implicit local feature clustering. arXiv, 2023. paper

    Jie Zhang, Masanori Suganuma, and Takayuki Okatani.

Cluster

  1. MIDAS: Microcluster-based detector of anomalies in edge streams. AAAI, 2020. paper

    Siddharth Bhatia, Bryan Hooi, Minji Yoon, Kijung Shin, and Christos Faloutsos.

  2. Multiple dynamic outlier-detection from a data stream by exploiting duality of data and queries. SIGMOD, 2021. paper

    Susik Yoon, Yooju Shin, Jae-Gil Lee, and Byung Suk Lee.

  3. Dynamic local aggregation network with adaptive clusterer for anomaly detection. ECCV, 2022. paper

    Zhiwei Yang, Peng Wu, Jing Liu, and Xiaotao Liu.

  4. Clustering and unsupervised anomaly detection with L2 normalized deep auto-encoder representations. IJCNN, 2018. paper

    Caglar Aytekin, Xingyang Ni, Francesco Cricri, and Emre Aksu.

  5. Clustering driven deep autoencoder for video anomaly detection. ECCV, 2020. paper

    Yunpeng Chang, Zhigang Tu, Wei Xie, and Junsong Yuan.

  6. Cluster purging: Efficient outlier detection based on rate-distortion theory. TKDE, 2023. paper

    Maximilian B. Toller, Bernhard C. Geiger, and Roman Kern.

  7. Outlier detection: How to Select k for k-nearest-neighbors-based outlier detectors. Pattern Recognition Letters, 2023. paper

    Jiawei Yang, Xu Tan, and Sylwan Rahardja.

  8. Improved outlier robust seeding for k-means. arXiv, 2023. paper

    Amit Deshpande and Rameshwar Pratap.

  9. Outlier detection using three-way neighborhood characteristic regions and corresponding fusion measurement. TKDE, 2023. paper

    Xianyong Zhang, Zhong Yuan, and Duoqian Miao.

  10. Autonomous anomaly detection for streaming data. KBS, 2023. paper

    Muhammad Yunus Bin Iqbal Basheer, Azliza Mohd Ali, Nurzeatul Hamimah Abdul Hamid, Muhammad Azizi Mohd Ariffin, Rozianawaty Osman, Sharifalillah Nordin, and Xiaowei Gu.

  11. Bagged regularized k-distances for anomaly detection. arXiv, 2023. paper

    Yuchao Cai, Yuheng Ma, Hanfang Yang, and Hanyuan Hang.

  12. Smoothing outlier scores is all you need to improve outlier detectors. TKDE, 2023. paper

    Jiawei Yang, Susanto Rahardja, and Pasi Fränti.

Isolation

  1. Isolation distributional kernel: A new tool for kernel based anomaly detection. KDD, 2020. paper

    Kai Ming Ting, Bicun Xu, Takashi Washio, and Zhihua Zhou.

  2. AIDA: Analytic isolation and distance-based anomaly detection algorithm. arXiv, 2022. paper

    Luis Antonio Souto Arias, Cornelis W. Oosterlee, and Pasquale Cirillo.

  3. OptIForest: Optimal isolation forest for anomaly detection. IJCAI, 2023. paper

    Haolong Xiang, Xuyun Zhang, Hongsheng Hu, Lianyong Qi, Wanchun Dou, Mark Dras, Amin Beheshti, and Xiaolong Xu.

  4. Deep isolation forest for anomaly detection. TKDE, 2023. paper

    Hongzuo Xu, Guansong Pang, Yijie Wang, and Yongjun Wang.

Multi Modal

  1. Multimodal industrial anomaly detection via hybrid fusion. CVPR, 2023. paper

    Yue Wang, Jinlong Peng, Jiangning Zhang, Ran Yi, Yabiao Wang, and Chengjie Wang.

  2. A multimodal anomaly detector for robot-assisted feeding using an LSTM-based variational autoencoder. ICRA, 2018. paper

    Daehyung Park, Yuuna Hoshi, and Charles C. Kemp.

  3. EasyNet: An easy network for 3D industrial anomaly detection. arXiv, 2023. paper

    Ruitao Chen, Guoyang Xie, Jiaqi Liu, Jinbao Wang, Ziqi Luo, Jinfan Wang, and Feng Zheng.

  4. ADMire++: Explainable anomaly detection in the human brain via inductive learning on temporal multiplex networks. ICML, 2023. paper

    Ali Behrouz and Margo Seltzer.

  5. Improving anomaly segmentation with multi-granularity cross-domain alignment. arXiv, 2023. paper

    Ji Zhang, Xiao Wu, Zhi-Qi Cheng, Qi He, and Wei Li.

  6. SeMAnD: Self-supervised anomaly detection in multimodal geospatial datasets. ACM SIGSPATIAL, 2023. paper

    Daria Reshetova, Swetava Ganguli, C. V. Krishnakumar Iyer, and Vipul Pandey.

  7. Improving vision anomaly detection with the guidance of language modality. arXiv, 2023. paper

    Dong Chen, Kaihang Pan, Guoming Wang, Yueting Zhuang, and Siliang Tang.

  8. Debunking free fusion myth: Online multi-view anomaly detection with disentangled product-of-experts modeling. MM, 2023. paper

    Hao Wang, Zhiqi Cheng, Jingdong Sun, Xin Yang, Xiao Wu, Hongyang Chen, and Yan Yang.

  9. Multimodal industrial anomaly detection by crossmodal feature mapping. arXiv, 2023. paper

    Alex Costanzino, Pierluigi Zama Ramirez, Giuseppe Lisanti, and Luigi Di Stefano.

Optimal Transport

  1. Prototype-oriented unsupervised anomaly detection for multivariate time series. ICML, 2023. paper

    Yuxin Li, Wenchao Chen, Bo Chen, Dongsheng Wang, Long Tian, and Mingyuan Zhou.

Causal Inference

  1. Learning causality-inspired representation consistency for video anomaly detection. ACM MM, 2023. paper

    Yang Liu, Zhaoyang Xia, Mengyang Zhao, Donglai Wei, Yuzheng Wang, Liu Siao, Bobo Ju, Gaoyun Fang, Jing Liu, and Liang Song.

Gaussian Process

  1. Deep anomaly detection with deviation networks. KDD, 2019. paper

    Guansong Pang, Chunhua Shen, and Anton van den Hengel.

  2. Video anomaly detection and localization using hierarchical feature representation and Gaussian process regression. CVPR, 2015. paper

    Kai-Wen Cheng and Yie-Tarng Chen, and Wen-Hsien Fang.

  3. Multidimensional time series anomaly detection: A GRU-based Gaussian mixture variational autoencoder approach. ACCV, 2018. paper

    Yifan Guo, Weixian Liao, Qianlong Wang, Lixing Yu, Tianxi Ji, and Pan Li.

  4. Gaussian process regression-based video anomaly detection and localization with hierarchical feature representation. TIP, 2015. paper

    Kaiwen Cheng, Yie-Tarng Chen, and Wen-Hsien Fang.

  5. Adversarial anomaly detection using Gaussian priors and nonlinear anomaly scores. ICDM, 2023. paper

    Fiete Lüer, Tobias Weber, Maxim Dolgich, and Christian Böhm.

  6. Invariant anomaly detection under distribution shifts: A causal perspective. arXiv, 2023. paper

    João B. S. Carvalho, Mengtao Zhang, Robin Geyer, Carlos Cotrini, and Joachim M. Buhmann.

Multi Task

  1. Beyond dents and scratches: Logical constraints in unsupervised anomaly detection and localization. IJCV, 2022. paper

    Paul Bergmann, Kilian Batzner, Michael Fauser, David Sattlegger, and Carsten Steger.

  2. Anomaly detection in video via self-supervised and multi-task learning. CVPR, 2021. paper

    Mariana-Iuliana Georgescu, Antonio Barbalau, Radu Tudor Ionescu, Fahad Shahbaz Khan, Marius Popescu, and Mubarak Shah.

  3. Detecting semantic anomalies. AAAI, 2020. paper

    Faruk Ahmed and Aaron Courville.

  4. MGADN: A multi-task graph anomaly detection network for multivariate time series. arXiv, 2022. paper

    Weixuan Xiong and Xiaochen Sun.

  5. Holistic representation learning for multitask trajectory anomaly detection. WACV, 2023. paper

    Alexandros Stergiou, Brent De Weerdt, and Nikos Deligiannis.

Interpretability

  1. Transparent anomaly detection via concept-based explanations. arXiv, 2023. paper

    Laya Rafiee Sevyeri, Ivaxi Sheth, and Farhood Farahnak.

  2. Towards self-interpretable graph-level anomaly detection. NIPS, 2023. paper

    Yixin Liu, Kaize Ding, Qinghua Lu, Fuyi Li, Leo Yu Zhang, and Shirui Pan.

  3. Explainable anomaly detection using masked latent generative modeling. arXiv, 2023. paper

    Daesoo Lee, Sara Malacarne, and Erlend Aune.

Open Set

  1. Anomaly heterogeneity learning for open-set supervised anomaly detection. arXiv, 2023. paper

    Jiawen Zhu, Choubo Ding, Yu Tian, and Guansong Pang.

  2. Open-set multivariate time-series anomaly detection. arXiv, 2023. paper

    Thomas Lai, Thi Kieu Khanh Ho, and Narges Armanfard.

  3. SSB: Simple but strong baseline for boosting performance of open-set semi-supervised learning. ICCV, 2023. paper

    Yue Fan, Anna Kukleva, Dengxin Dai, and Bernt Schiele.

Neural Process

  1. Semi-supervised anomaly detection via neural process. TKDE, 2023. paper

    Fan Zhou, Guanyu Wang, Kunpeng Zhang, Siyuan Liu, and Ting Zhong.

  2. Precursor-of-anomaly detection for irregular time series. KDD, 2023. paper

    Sheo Yon Jhin, Jaehoon Lee, and Noseong Park.

Application

Finance

  1. Antibenford subgraphs: Unsupervised anomaly detection in financial networks. KDD, 2022. paper

    Tianyi Chen and E. Tsourakakis.

  2. Adversarial machine learning attacks against video anomaly detection systems. CVPR, 2022. paper

    Furkan Mumcu, Keval Doshi, and Yasin Yilmaz.

  3. Financial time series forecasting using CNN and Transformer. AAAI, 2023. paper

    Zhen Zeng, Rachneet Kaur, Suchetha Siddagangappa, Saba Rahimi, Tucker Balch, and Manuela Veloso.

  4. WAKE: A weakly supervised business process anomaly detection framework via a pre-trained autoencoder. TKDE, 2023. paper

    Wei Guan, Jian Cao, Haiyan Zhao, Yang Gu, and Shiyou Qian.

  5. Probabilistic sampling-enhanced temporalspatial GCN: A scalable framework for transaction anomaly detection in Ethereum networks. arXiv, 2023. paper

    Stefan Kambiz Behfar and Jon Crowcroft.

  6. Making the end-user a priority in benchmarking: OrionBench for unsupervised time series anomaly detection. arXiv, 2023. paper

    Sarah Alnegheimish, Laure Berti-Equille, and Kalyan Veeramachaneni.

Point Cloud

  1. Teacher-student network for 3D point cloud anomaly detection with few normal samples. arXiv, 2022. paper

    Jianjian Qin, Chunzhi Gu, Jun Yu, and Chao Zhang.

  2. Teacher-student network for 3D point cloud anomaly detection with few normal samples. WACV, 2023. paper

    Paul Bergmann and David Sattlegger.

  3. Anomaly detection in 3D point clouds using deep geometric descriptors. WACV, 2023. paper

    Lokesh Veeramacheneni and Matias Valdenegro-Toro.

  4. Learning point-wise abstaining penalty for point cloud anomaly detection. arXiv, 2023. paper

    Shaocong Xu, Pengfei Li, Xinyu Liu, Qianpu Sun, Yang Li, Shihui Guo, Zhen Wang, Bo Jiang, Rui Wang, Kehua Sheng, Bo Zhang, and Hao Zhao.

  5. Real3D-AD: A dataset of point cloud anomaly detection. arXiv, 2023. paper

    Jiaqi Liu, Guoyang Xie, Ruitao Chen, Xinpeng Li, Jinbao Wang, Yong Liu, Chengjie Wang, and Feng Zheng.

  6. Cheating depth: Enhancing 3D surface anomaly detection via depth simulation. WACV, 2024. paper

    Vitjan Zavrtanik, Matej Kristan, and Danijel Skocaj.

  7. Image-pointcloud fusion based anomaly detection using PD-REAL dataset. arXiv, 2023. paper

    Jianjian Qin, Chunzhi Gu, Jun Yu, and Chao Zhang.

Autonomous Driving

  1. DeepSegmenter: Temporal action localization for detecting anomalies in untrimmed naturalistic driving videos. arXiv, 2023. paper

    Armstrong Aboah, Ulas Bagci, Abdul Rashid Mussah, Neema Jakisa Owor, and Yaw Adu-Gyamfi.

  2. Multivariate time-series anomaly detection with temporal self-supervision and graphs: Application to vehicle failure prediction. ECML PKDD, 2023. paper

    Hadi Hojjati, Mohammadreza Sadeghi, and Narges Armanfard.

  3. Traffic anomaly detection: Exploiting temporal positioning of flow-density samples. TITS, 2023. paper

    Iman Taheri Sarteshnizi, Saeed Asadi Bagloee, Majid Sarvi, and Neema Nassir.

Medical Image

  1. SWSSL: Sliding window-based self-supervised learning for anomaly detection in high-resolution images. IEEE Transactions on Medical Imaging, 2023. paper

    Haoyu Dong, Yifan Zhang, Hanxue Gu, Nicholas Konz, Yixin Zhang, and Maciej A Mazurowskii.

  2. A model-agnostic framework for universal anomaly detection of multi-organ and multi-modal images. MICCAI, 2023. paper

    Yinghao Zhang, Donghuan Lu, Munan Ning, Liansheng Wang, Dong Wei, and Yefeng Zheng .

  3. Dual conditioned diffusion models for out-of-distribution detection: Application to fetal ultrasound videos. MICCAI, 2023. paper

    Divyanshu Mishra, He Zhao, Pramit Saha, Aris T. Papageorghiou, and J. Alison Noble .

Robotics

  1. Proactive anomaly detection for robot navigation with multi-sensor fusion. RAL, 2023. paper

    Tianchen Ji, Arun Narenthiran Sivakumar, Girish Chowdhary, and Katherine Driggs-Campbell.

Cyber Intrusion

  1. Intrusion detection using convolutional neural networks for representation learning. ICONIP, 2017. paper

    Hipeng Li, Zheng Qin, Kai Huang, Xiao Yang, and Shuxiong Ye.

  2. UMD: Unsupervised model detection for x2x backdoor attacks. ICML, 2023. paper

    Zhen Xiang, Zidi Xiong, and Bo Li.

  3. Kick bad guys out! Zero-knowledge-proof-based anomaly detection in federated learning. arXiv, 2023. paper

    Shanshan Han, Wenxuan Wu, Baturalp Buyukates, Weizhao Jin, Yuhang Yao, Qifan Zhang, Salman Avestimehr, and Chaoyang He.

  4. Adaptive-correlation-aware unsupervised deep learning for anomaly detection in cyber-physical systems. IEEE Transactions on Dependable and Secure Computing, 2023. paper

    Liang Xi, Dehua Miao, Menghan Li, Ruidong Wang, Han Liu, and Xunhua Huang.

  5. MTS-DVGAN: Anomaly detection in cyber-physical systems using a dual variational generative adversarial network. Computers & Security, 2023. paper

    Haili Sun, Yan Huang, Lansheng Han, Cai Fu, Hongle Liu, and Xiang Long.

  6. Adversarial attacks against dynamic graph neural networks via node injection. High-Confidence Computing, 2023. paper

    Yanan Jiang and Hui Xia.

  7. Hybrid resampling and weighted majority voting for multi-class anomaly detection on imbalanced malware and network traffic data. Engineering Applications of Artificial Intelligence, 2023. paper

    Liang Xue and Tianqing Zhu.

Diagnosis

  1. Transformer-based normative modelling for anomaly detection of early schizophrenia. NIPS, 2022. paper

    Pedro F Da Costa, Jessica Dafflon, Sergio Leonardo Mendes, João Ricardo Sato, M. Jorge Cardoso, Robert Leech, Emily JH Jones, and Walter H.L. Pinaya.

High Performance Computing

  1. Anomaly detection using autoencoders in high performance computing systems. IAAI, 2019. paper

    Andrea Borghesi, Andrea Bartolini, Michele Lombardi, Michela Milano, and Luca Benini.

  2. MoniLog: An automated log-based anomaly detection system for cloud computing infrastructures. ICDE, 2023. paper

    Arthur Vervaet.

  3. Self-supervised learning for anomaly detection in computational workflows. arXiv, 2023. paper

    Hongwei Jin, Krishnan Raghavan, George Papadimitriou, Cong Wang, Anirban Mandal, Ewa Deelman, and Prasanna Balaprakash.

Physics

  1. Anomaly detection under coordinate transformations. Physical Review D, 2023. paper

    Gregor Kasieczka, Radha Mastandrea, Vinicius Mikuni, Benjamin Nachman, Mariel Pettee, and David Shih.

  2. Back to the roots: Tree-based algorithms for weakly supervised anomaly detection. arXiv, 2023. paper

    Thorben Finke, Marie Hein, Gregor Kasieczka, Michael Krämer, Alexander Mück, Parada Prangchaikul, Tobias Quadfasel, David Shih, and Manuel Sommerhalder.

  3. A physics-informed variational autoencoder for rapid galaxy inference and anomaly detection. arXiv, 2023. paper

    Alexander Gagliano and V. Ashley Villar.

Industry Process

  1. In-situ anomaly detection in additive manufacturing with graph neural networks. ICLR, 2023. paper

    Sebastian Larsen and Paul A. Hooper.

  2. Knowledge distillation-empowered digital twin for anomaly detection. arXiv, 2023. paper

    Qinghua Xu, Shaukat Ali, Tao Yue, Zaimovic Nedim, and Inderjeet Singh.

  3. Anomaly detection with memory-augmented adversarial autoencoder networks for industry 5.0. IEEE Transactions on Consumer Electronics, 2023. paper

    Huan Zhang, Neeraj Kumar, Sheng Wu, Chunlei Wu, Jian Wang, and Peiying Zhang.

  4. FDEPCA: A novel adaptive nonlinear feature extraction method via fruit fly olfactory neural network for iomt anomaly detection. IEEE Journal of Biomedical and Health Informatics, 2023. paper

    Yihan Chen, Zhixia Zeng, Xinhong Lin, Xin Du, Imad Rida, and Ruliang Xiao.

  5. A discrepancy aware framework for robust anomaly detection. TII, 2023. paper

    Yuxuan Cai, Dingkang Liang, Dongliang Luo, Xinwei He, Xin Yang, and Xiang Bai.

  6. Anomaly detection with memory-augmented adversarial autoencoder networks for industry 5.0. IEEE Transactions on Consumer Electronics, 2023. paper

    Huan Zhang, Neeraj Kumar, Sheng Wu, Chunlei Wu, Jian Wang, and Peiying Zhang.

  7. Towards total online unsupervised anomaly detection and localization in industrial vision. arXiv, 2023. paper

    Han Gao, Huiyuan Luo, Fei Shen, and Zhengtao Zhang.

  8. Self-supervised variational graph autoencoder for system-level anomaly detection. TIM, 2023. paper

    Le Zhang, Wei Cheng, Ji Xing, Xuefeng Chen, Zelin Nie, Shuo Zhang, Junying Hong, and Zhao Xu.

Software

  1. GRAND: GAN-based software runtime anomaly detection method using trace information. Neural Networks, 2023. paper

    Shiyi Kong, Jun Ai, Minyan Lu, and Yiang Gong.

  2. Log-based anomaly detection of enterprise software: An empirical study. arXiv, 2023. paper

    Nadun Wijesinghe and Hadi Hemmati.

  3. Efficiency of unsupervised anomaly detection methods on software logs. arXiv, 2023. paper

    Jesse Nyyssölä and Mika Mäntylä.

Astronomy

  1. Multi-class deep SVDD: Anomaly detection approach in astronomy with distinct inlier categories. arXiv, 2023. paper

    Pérez-Carrasco Manuel, Cabrera-Vives Guillermo, Hernández-García Lorena, Forster Francisco, Sánchez-Sáez Paula, Muñoz Arancibia Alejandra, Astorga Nicolás, Bauer Franz, Bayo Amelia, Cádiz-Leyton Martina, and Catelan Marcio.

  2. GWAK: Gravitational-wave anomalous knowledge with recurrent autoencoders. arXiv, 2023. paper

    Ryan Raikman, Eric A. Moreno, Ekaterina Govorkova, Ethan J Marx, Alec Gunny, William Benoit, Deep Chatterjee, Rafia Omer, Muhammed Saleem, Dylan S Rankin, Michael W Coughlin, Philip C Harris, and Erik Katsavounidis.

About